Há mais AWS SDK exemplos disponíveis no GitHub repositório AWS Doc SDK Examples
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Exemplos do Amazon SDK Rekognition usando para Java 2.x
Os exemplos de código a seguir mostram como realizar ações e implementar cenários comuns usando o AWS SDK for Java 2.x com o Amazon Rekognition.
Ações são trechos de código de programas maiores e devem ser executadas em contexto. Embora as ações mostrem como chamar funções de serviço individuais, é possível ver as ações no contexto em seus cenários relacionados.
Os cenários são exemplos de código que mostram como realizar tarefas específicas chamando várias funções dentro de um serviço ou combinadas com outros Serviços da AWS.
Cada exemplo inclui um link para o código-fonte completo, onde você pode encontrar instruções sobre como configurar e executar o código no contexto.
Ações
O código de exemplo a seguir mostra como usar CompareFaces
.
Para obter mais informações, consulte Comparação de faces em imagens.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.Image; import software.amazon.awssdk.services.rekognition.model.CompareFacesRequest; import software.amazon.awssdk.services.rekognition.model.CompareFacesResponse; import software.amazon.awssdk.services.rekognition.model.CompareFacesMatch; import software.amazon.awssdk.services.rekognition.model.ComparedFace; import software.amazon.awssdk.services.rekognition.model.BoundingBox; import software.amazon.awssdk.core.SdkBytes; import java.io.FileInputStream; import java.io.FileNotFoundException; import java.io.InputStream; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class CompareFaces { public static void main(String[] args) { final String usage = """ Usage: <pathSource> <pathTarget> Where: pathSource - The path to the source image (for example, C:\\AWS\\pic1.png).\s pathTarget - The path to the target image (for example, C:\\AWS\\pic2.png).\s """; if (args.length != 2) { System.out.println(usage); System.exit(1); } Float similarityThreshold = 70F; String sourceImage = args[0]; String targetImage = args[1]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); compareTwoFaces(rekClient, similarityThreshold, sourceImage, targetImage); rekClient.close(); } public static void compareTwoFaces(RekognitionClient rekClient, Float similarityThreshold, String sourceImage, String targetImage) { try { InputStream sourceStream = new FileInputStream(sourceImage); InputStream tarStream = new FileInputStream(targetImage); SdkBytes sourceBytes = SdkBytes.fromInputStream(sourceStream); SdkBytes targetBytes = SdkBytes.fromInputStream(tarStream); // Create an Image object for the source image. Image souImage = Image.builder() .bytes(sourceBytes) .build(); Image tarImage = Image.builder() .bytes(targetBytes) .build(); CompareFacesRequest facesRequest = CompareFacesRequest.builder() .sourceImage(souImage) .targetImage(tarImage) .similarityThreshold(similarityThreshold) .build(); // Compare the two images. CompareFacesResponse compareFacesResult = rekClient.compareFaces(facesRequest); List<CompareFacesMatch> faceDetails = compareFacesResult.faceMatches(); for (CompareFacesMatch match : faceDetails) { ComparedFace face = match.face(); BoundingBox position = face.boundingBox(); System.out.println("Face at " + position.left().toString() + " " + position.top() + " matches with " + face.confidence().toString() + "% confidence."); } List<ComparedFace> uncompared = compareFacesResult.unmatchedFaces(); System.out.println("There was " + uncompared.size() + " face(s) that did not match"); System.out.println("Source image rotation: " + compareFacesResult.sourceImageOrientationCorrection()); System.out.println("target image rotation: " + compareFacesResult.targetImageOrientationCorrection()); } catch (RekognitionException | FileNotFoundException e) { System.out.println("Failed to load source image " + sourceImage); System.exit(1); } } }
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Para API obter detalhes, consulte CompareFacesem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar CreateCollection
.
Para obter mais informações, consulte Criar uma coleção.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.CreateCollectionResponse; import software.amazon.awssdk.services.rekognition.model.CreateCollectionRequest; import software.amazon.awssdk.services.rekognition.model.RekognitionException; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class CreateCollection { public static void main(String[] args) { final String usage = """ Usage: <collectionName>\s Where: collectionName - The name of the collection.\s """; if (args.length != 1) { System.out.println(usage); System.exit(1); } String collectionId = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); System.out.println("Creating collection: " + collectionId); createMyCollection(rekClient, collectionId); rekClient.close(); } public static void createMyCollection(RekognitionClient rekClient, String collectionId) { try { CreateCollectionRequest collectionRequest = CreateCollectionRequest.builder() .collectionId(collectionId) .build(); CreateCollectionResponse collectionResponse = rekClient.createCollection(collectionRequest); System.out.println("CollectionArn: " + collectionResponse.collectionArn()); System.out.println("Status code: " + collectionResponse.statusCode().toString()); } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte CreateCollectionem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar DeleteCollection
.
Para obter mais informações, consulte Excluir uma coleção.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.DeleteCollectionRequest; import software.amazon.awssdk.services.rekognition.model.DeleteCollectionResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class DeleteCollection { public static void main(String[] args) { final String usage = """ Usage: <collectionId>\s Where: collectionId - The id of the collection to delete.\s """; if (args.length != 1) { System.out.println(usage); System.exit(1); } String collectionId = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); System.out.println("Deleting collection: " + collectionId); deleteMyCollection(rekClient, collectionId); rekClient.close(); } public static void deleteMyCollection(RekognitionClient rekClient, String collectionId) { try { DeleteCollectionRequest deleteCollectionRequest = DeleteCollectionRequest.builder() .collectionId(collectionId) .build(); DeleteCollectionResponse deleteCollectionResponse = rekClient.deleteCollection(deleteCollectionRequest); System.out.println(collectionId + ": " + deleteCollectionResponse.statusCode().toString()); } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte DeleteCollectionem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar DeleteFaces
.
Para obter mais informações, consulte Excluir faces de uma coleção.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.DeleteFacesRequest; import software.amazon.awssdk.services.rekognition.model.RekognitionException; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class DeleteFacesFromCollection { public static void main(String[] args) { final String usage = """ Usage: <collectionId> <faceId>\s Where: collectionId - The id of the collection from which faces are deleted.\s faceId - The id of the face to delete.\s """; if (args.length != 1) { System.out.println(usage); System.exit(1); } String collectionId = args[0]; String faceId = args[1]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); System.out.println("Deleting collection: " + collectionId); deleteFacesCollection(rekClient, collectionId, faceId); rekClient.close(); } public static void deleteFacesCollection(RekognitionClient rekClient, String collectionId, String faceId) { try { DeleteFacesRequest deleteFacesRequest = DeleteFacesRequest.builder() .collectionId(collectionId) .faceIds(faceId) .build(); rekClient.deleteFaces(deleteFacesRequest); System.out.println("The face was deleted from the collection."); } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte DeleteFacesem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar DescribeCollection
.
Para obter mais informações, consulte Descrever uma coleção.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.DescribeCollectionRequest; import software.amazon.awssdk.services.rekognition.model.DescribeCollectionResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class DescribeCollection { public static void main(String[] args) { final String usage = """ Usage: <collectionName> Where: collectionName - The name of the Amazon Rekognition collection.\s """; if (args.length != 1) { System.out.println(usage); System.exit(1); } String collectionName = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); describeColl(rekClient, collectionName); rekClient.close(); } public static void describeColl(RekognitionClient rekClient, String collectionName) { try { DescribeCollectionRequest describeCollectionRequest = DescribeCollectionRequest.builder() .collectionId(collectionName) .build(); DescribeCollectionResponse describeCollectionResponse = rekClient .describeCollection(describeCollectionRequest); System.out.println("Collection Arn : " + describeCollectionResponse.collectionARN()); System.out.println("Created : " + describeCollectionResponse.creationTimestamp().toString()); } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte DescribeCollectionem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar DetectFaces
.
Para obter mais informações, consulte Detectar faces em uma imagem.
- SDKpara Java 2.x
-
nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.DetectFacesRequest; import software.amazon.awssdk.services.rekognition.model.DetectFacesResponse; import software.amazon.awssdk.services.rekognition.model.Image; import software.amazon.awssdk.services.rekognition.model.Attribute; import software.amazon.awssdk.services.rekognition.model.FaceDetail; import software.amazon.awssdk.services.rekognition.model.AgeRange; import software.amazon.awssdk.core.SdkBytes; import java.io.FileInputStream; import java.io.FileNotFoundException; import java.io.InputStream; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class DetectFaces { public static void main(String[] args) { final String usage = """ Usage: <sourceImage> Where: sourceImage - The path to the image (for example, C:\\AWS\\pic1.png).\s """; if (args.length != 1) { System.out.println(usage); System.exit(1); } String sourceImage = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); detectFacesinImage(rekClient, sourceImage); rekClient.close(); } public static void detectFacesinImage(RekognitionClient rekClient, String sourceImage) { try { InputStream sourceStream = new FileInputStream(sourceImage); SdkBytes sourceBytes = SdkBytes.fromInputStream(sourceStream); // Create an Image object for the source image. Image souImage = Image.builder() .bytes(sourceBytes) .build(); DetectFacesRequest facesRequest = DetectFacesRequest.builder() .attributes(Attribute.ALL) .image(souImage) .build(); DetectFacesResponse facesResponse = rekClient.detectFaces(facesRequest); List<FaceDetail> faceDetails = facesResponse.faceDetails(); for (FaceDetail face : faceDetails) { AgeRange ageRange = face.ageRange(); System.out.println("The detected face is estimated to be between " + ageRange.low().toString() + " and " + ageRange.high().toString() + " years old."); System.out.println("There is a smile : " + face.smile().value().toString()); } } catch (RekognitionException | FileNotFoundException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte DetectFacesem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar DetectLabels
.
Para obter mais informações, consulte Detectar rótulos em uma imagem.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.core.SdkBytes; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.Image; import software.amazon.awssdk.services.rekognition.model.DetectLabelsRequest; import software.amazon.awssdk.services.rekognition.model.DetectLabelsResponse; import software.amazon.awssdk.services.rekognition.model.Label; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import java.io.FileInputStream; import java.io.FileNotFoundException; import java.io.InputStream; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class DetectLabels { public static void main(String[] args) { final String usage = """ Usage: <sourceImage> Where: sourceImage - The path to the image (for example, C:\\AWS\\pic1.png).\s """; if (args.length != 1) { System.out.println(usage); System.exit(1); } String sourceImage = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); detectImageLabels(rekClient, sourceImage); rekClient.close(); } public static void detectImageLabels(RekognitionClient rekClient, String sourceImage) { try { InputStream sourceStream = new FileInputStream(sourceImage); SdkBytes sourceBytes = SdkBytes.fromInputStream(sourceStream); // Create an Image object for the source image. Image souImage = Image.builder() .bytes(sourceBytes) .build(); DetectLabelsRequest detectLabelsRequest = DetectLabelsRequest.builder() .image(souImage) .maxLabels(10) .build(); DetectLabelsResponse labelsResponse = rekClient.detectLabels(detectLabelsRequest); List<Label> labels = labelsResponse.labels(); System.out.println("Detected labels for the given photo"); for (Label label : labels) { System.out.println(label.name() + ": " + label.confidence().toString()); } } catch (RekognitionException | FileNotFoundException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte DetectLabelsem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar DetectModerationLabels
.
Para obter mais informações, consulte Detectar imagens impróprias.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.core.SdkBytes; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.Image; import software.amazon.awssdk.services.rekognition.model.DetectModerationLabelsRequest; import software.amazon.awssdk.services.rekognition.model.DetectModerationLabelsResponse; import software.amazon.awssdk.services.rekognition.model.ModerationLabel; import java.io.FileInputStream; import java.io.FileNotFoundException; import java.io.InputStream; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class DetectModerationLabels { public static void main(String[] args) { final String usage = """ Usage: <sourceImage> Where: sourceImage - The path to the image (for example, C:\\AWS\\pic1.png).\s """; if (args.length < 1) { System.out.println(usage); System.exit(1); } String sourceImage = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); detectModLabels(rekClient, sourceImage); rekClient.close(); } public static void detectModLabels(RekognitionClient rekClient, String sourceImage) { try { InputStream sourceStream = new FileInputStream(sourceImage); SdkBytes sourceBytes = SdkBytes.fromInputStream(sourceStream); Image souImage = Image.builder() .bytes(sourceBytes) .build(); DetectModerationLabelsRequest moderationLabelsRequest = DetectModerationLabelsRequest.builder() .image(souImage) .minConfidence(60F) .build(); DetectModerationLabelsResponse moderationLabelsResponse = rekClient .detectModerationLabels(moderationLabelsRequest); List<ModerationLabel> labels = moderationLabelsResponse.moderationLabels(); System.out.println("Detected labels for image"); for (ModerationLabel label : labels) { System.out.println("Label: " + label.name() + "\n Confidence: " + label.confidence().toString() + "%" + "\n Parent:" + label.parentName()); } } catch (RekognitionException | FileNotFoundException e) { e.printStackTrace(); System.exit(1); } } }
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Para API obter detalhes, consulte DetectModerationLabelsem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar DetectText
.
Para obter mais informações, consulte Detectar texto em uma imagem.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.core.SdkBytes; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.DetectTextRequest; import software.amazon.awssdk.services.rekognition.model.Image; import software.amazon.awssdk.services.rekognition.model.DetectTextResponse; import software.amazon.awssdk.services.rekognition.model.TextDetection; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import java.io.FileInputStream; import java.io.FileNotFoundException; import java.io.InputStream; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class DetectText { public static void main(String[] args) { final String usage = """ Usage: <sourceImage> Where: sourceImage - The path to the image that contains text (for example, C:\\AWS\\pic1.png).\s """; if (args.length != 1) { System.out.println(usage); System.exit(1); } String sourceImage = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); detectTextLabels(rekClient, sourceImage); rekClient.close(); } public static void detectTextLabels(RekognitionClient rekClient, String sourceImage) { try { InputStream sourceStream = new FileInputStream(sourceImage); SdkBytes sourceBytes = SdkBytes.fromInputStream(sourceStream); Image souImage = Image.builder() .bytes(sourceBytes) .build(); DetectTextRequest textRequest = DetectTextRequest.builder() .image(souImage) .build(); DetectTextResponse textResponse = rekClient.detectText(textRequest); List<TextDetection> textCollection = textResponse.textDetections(); System.out.println("Detected lines and words"); for (TextDetection text : textCollection) { System.out.println("Detected: " + text.detectedText()); System.out.println("Confidence: " + text.confidence().toString()); System.out.println("Id : " + text.id()); System.out.println("Parent Id: " + text.parentId()); System.out.println("Type: " + text.type()); System.out.println(); } } catch (RekognitionException | FileNotFoundException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte DetectTextem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar IndexFaces
.
Para obter mais informações, consulte Adicionar faces a uma coleção.
- SDKpara Java 2.x
-
nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.core.SdkBytes; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.IndexFacesResponse; import software.amazon.awssdk.services.rekognition.model.IndexFacesRequest; import software.amazon.awssdk.services.rekognition.model.Image; import software.amazon.awssdk.services.rekognition.model.QualityFilter; import software.amazon.awssdk.services.rekognition.model.Attribute; import software.amazon.awssdk.services.rekognition.model.FaceRecord; import software.amazon.awssdk.services.rekognition.model.UnindexedFace; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.Reason; import java.io.FileInputStream; import java.io.FileNotFoundException; import java.io.InputStream; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class AddFacesToCollection { public static void main(String[] args) { final String usage = """ Usage: <collectionId> <sourceImage> Where: collectionName - The name of the collection. sourceImage - The path to the image (for example, C:\\AWS\\pic1.png).\s """; if (args.length != 2) { System.out.println(usage); System.exit(1); } String collectionId = args[0]; String sourceImage = args[1]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); addToCollection(rekClient, collectionId, sourceImage); rekClient.close(); } public static void addToCollection(RekognitionClient rekClient, String collectionId, String sourceImage) { try { InputStream sourceStream = new FileInputStream(sourceImage); SdkBytes sourceBytes = SdkBytes.fromInputStream(sourceStream); Image souImage = Image.builder() .bytes(sourceBytes) .build(); IndexFacesRequest facesRequest = IndexFacesRequest.builder() .collectionId(collectionId) .image(souImage) .maxFaces(1) .qualityFilter(QualityFilter.AUTO) .detectionAttributes(Attribute.DEFAULT) .build(); IndexFacesResponse facesResponse = rekClient.indexFaces(facesRequest); System.out.println("Results for the image"); System.out.println("\n Faces indexed:"); List<FaceRecord> faceRecords = facesResponse.faceRecords(); for (FaceRecord faceRecord : faceRecords) { System.out.println(" Face ID: " + faceRecord.face().faceId()); System.out.println(" Location:" + faceRecord.faceDetail().boundingBox().toString()); } List<UnindexedFace> unindexedFaces = facesResponse.unindexedFaces(); System.out.println("Faces not indexed:"); for (UnindexedFace unindexedFace : unindexedFaces) { System.out.println(" Location:" + unindexedFace.faceDetail().boundingBox().toString()); System.out.println(" Reasons:"); for (Reason reason : unindexedFace.reasons()) { System.out.println("Reason: " + reason); } } } catch (RekognitionException | FileNotFoundException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte IndexFacesem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar ListCollections
.
Para obter mais informações, consulte Listar coleções.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.ListCollectionsRequest; import software.amazon.awssdk.services.rekognition.model.ListCollectionsResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class ListCollections { public static void main(String[] args) { Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); System.out.println("Listing collections"); listAllCollections(rekClient); rekClient.close(); } public static void listAllCollections(RekognitionClient rekClient) { try { ListCollectionsRequest listCollectionsRequest = ListCollectionsRequest.builder() .maxResults(10) .build(); ListCollectionsResponse response = rekClient.listCollections(listCollectionsRequest); List<String> collectionIds = response.collectionIds(); for (String resultId : collectionIds) { System.out.println(resultId); } } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte ListCollectionsem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar ListFaces
.
Para obter mais informações, consulte Listar faces em uma coleção.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.Face; import software.amazon.awssdk.services.rekognition.model.ListFacesRequest; import software.amazon.awssdk.services.rekognition.model.ListFacesResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class ListFacesInCollection { public static void main(String[] args) { final String usage = """ Usage: <collectionId> Where: collectionId - The name of the collection.\s """; if (args.length < 1) { System.out.println(usage); System.exit(1); } String collectionId = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); System.out.println("Faces in collection " + collectionId); listFacesCollection(rekClient, collectionId); rekClient.close(); } public static void listFacesCollection(RekognitionClient rekClient, String collectionId) { try { ListFacesRequest facesRequest = ListFacesRequest.builder() .collectionId(collectionId) .maxResults(10) .build(); ListFacesResponse facesResponse = rekClient.listFaces(facesRequest); List<Face> faces = facesResponse.faces(); for (Face face : faces) { System.out.println("Confidence level there is a face: " + face.confidence()); System.out.println("The face Id value is " + face.faceId()); } } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte ListFacesem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar RecognizeCelebrities
.
Para obter mais informações, consulte Reconhecer celebridades em uma imagem.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.core.SdkBytes; import java.io.FileInputStream; import java.io.FileNotFoundException; import java.io.InputStream; import java.util.List; import software.amazon.awssdk.services.rekognition.model.RecognizeCelebritiesRequest; import software.amazon.awssdk.services.rekognition.model.RecognizeCelebritiesResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.Image; import software.amazon.awssdk.services.rekognition.model.Celebrity; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class RecognizeCelebrities { public static void main(String[] args) { final String usage = """ Usage: <sourceImage> Where: sourceImage - The path to the image (for example, C:\\AWS\\pic1.png).\s """; if (args.length != 1) { System.out.println(usage); System.exit(1); } String sourceImage = args[0]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); System.out.println("Locating celebrities in " + sourceImage); recognizeAllCelebrities(rekClient, sourceImage); rekClient.close(); } public static void recognizeAllCelebrities(RekognitionClient rekClient, String sourceImage) { try { InputStream sourceStream = new FileInputStream(sourceImage); SdkBytes sourceBytes = SdkBytes.fromInputStream(sourceStream); Image souImage = Image.builder() .bytes(sourceBytes) .build(); RecognizeCelebritiesRequest request = RecognizeCelebritiesRequest.builder() .image(souImage) .build(); RecognizeCelebritiesResponse result = rekClient.recognizeCelebrities(request); List<Celebrity> celebs = result.celebrityFaces(); System.out.println(celebs.size() + " celebrity(s) were recognized.\n"); for (Celebrity celebrity : celebs) { System.out.println("Celebrity recognized: " + celebrity.name()); System.out.println("Celebrity ID: " + celebrity.id()); System.out.println("Further information (if available):"); for (String url : celebrity.urls()) { System.out.println(url); } System.out.println(); } System.out.println(result.unrecognizedFaces().size() + " face(s) were unrecognized."); } catch (RekognitionException | FileNotFoundException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte RecognizeCelebritiesem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar SearchFaces
.
Para obter mais informações, consulte Pesquisar uma face (face ID).
- SDKpara Java 2.x
-
nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.core.SdkBytes; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.SearchFacesByImageRequest; import software.amazon.awssdk.services.rekognition.model.Image; import software.amazon.awssdk.services.rekognition.model.SearchFacesByImageResponse; import software.amazon.awssdk.services.rekognition.model.FaceMatch; import java.io.File; import java.io.FileInputStream; import java.io.FileNotFoundException; import java.io.InputStream; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class SearchFaceMatchingImageCollection { public static void main(String[] args) { final String usage = """ Usage: <collectionId> <sourceImage> Where: collectionId - The id of the collection. \s sourceImage - The path to the image (for example, C:\\AWS\\pic1.png).\s """; if (args.length != 2) { System.out.println(usage); System.exit(1); } String collectionId = args[0]; String sourceImage = args[1]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); System.out.println("Searching for a face in a collections"); searchFaceInCollection(rekClient, collectionId, sourceImage); rekClient.close(); } public static void searchFaceInCollection(RekognitionClient rekClient, String collectionId, String sourceImage) { try { InputStream sourceStream = new FileInputStream(new File(sourceImage)); SdkBytes sourceBytes = SdkBytes.fromInputStream(sourceStream); Image souImage = Image.builder() .bytes(sourceBytes) .build(); SearchFacesByImageRequest facesByImageRequest = SearchFacesByImageRequest.builder() .image(souImage) .maxFaces(10) .faceMatchThreshold(70F) .collectionId(collectionId) .build(); SearchFacesByImageResponse imageResponse = rekClient.searchFacesByImage(facesByImageRequest); System.out.println("Faces matching in the collection"); List<FaceMatch> faceImageMatches = imageResponse.faceMatches(); for (FaceMatch face : faceImageMatches) { System.out.println("The similarity level is " + face.similarity()); System.out.println(); } } catch (RekognitionException | FileNotFoundException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte SearchFacesem AWS SDK for Java 2.x APIReferência.
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O código de exemplo a seguir mostra como usar SearchFacesByImage
.
Para obter mais informações, consulte Pesquisar uma face (imagem).
- SDKpara Java 2.x
-
nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.SearchFacesRequest; import software.amazon.awssdk.services.rekognition.model.SearchFacesResponse; import software.amazon.awssdk.services.rekognition.model.FaceMatch; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class SearchFaceMatchingIdCollection { public static void main(String[] args) { final String usage = """ Usage: <collectionId> <sourceImage> Where: collectionId - The id of the collection. \s sourceImage - The path to the image (for example, C:\\AWS\\pic1.png).\s """; if (args.length != 2) { System.out.println(usage); System.exit(1); } String collectionId = args[0]; String faceId = args[1]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); System.out.println("Searching for a face in a collections"); searchFacebyId(rekClient, collectionId, faceId); rekClient.close(); } public static void searchFacebyId(RekognitionClient rekClient, String collectionId, String faceId) { try { SearchFacesRequest searchFacesRequest = SearchFacesRequest.builder() .collectionId(collectionId) .faceId(faceId) .faceMatchThreshold(70F) .maxFaces(2) .build(); SearchFacesResponse imageResponse = rekClient.searchFaces(searchFacesRequest); System.out.println("Faces matching in the collection"); List<FaceMatch> faceImageMatches = imageResponse.faceMatches(); for (FaceMatch face : faceImageMatches) { System.out.println("The similarity level is " + face.similarity()); System.out.println(); } } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte SearchFacesByImageem AWS SDK for Java 2.x APIReferência.
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Cenários
O exemplo de código a seguir mostra como criar uma aplicação com tecnologia sem servidor que permite que os usuários gerenciem fotos usando rótulos.
- SDKpara Java 2.x
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Mostra como desenvolver uma aplicação de gerenciamento de ativos fotográficos que detecta rótulos em imagens usando o Amazon Rekognition e os armazena para recuperação posterior.
Para obter o código-fonte completo e instruções sobre como configurar e executar, veja o exemplo completo em GitHub
. Para uma análise detalhada da origem desse exemplo, veja a publicação na Comunidade da AWS
. Serviços utilizados neste exemplo
APIGateway
DynamoDB
Lambda
Amazon Rekognition
Amazon S3
Amazon SNS
O exemplo de código a seguir mostra como criar um aplicativo que usa o Amazon Rekognition para detectar equipamentos de proteção individual () em imagens. PPE
- SDKpara Java 2.x
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Mostra como criar uma AWS Lambda função que detecta imagens com equipamento de proteção individual.
Para obter o código-fonte completo e instruções sobre como configurar e executar, veja o exemplo completo em GitHub
. Serviços usados neste exemplo
DynamoDB
Amazon Rekognition
Amazon S3
Amazon SES
O exemplo de código a seguir mostra como:
Iniciar trabalhos do Amazon Rekognition para detectar elementos como pessoas, objetos e texto em vídeos.
Verificar o status do trabalho até que os trabalhos terminem.
Visualizar a lista de elementos detectados por cada trabalho.
- SDKpara Java 2.x
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nota
Tem mais sobre GitHub. Encontre o exemplo completo e saiba como configurar e executar no Repositório de exemplos de código da AWS
. Obtenha resultados de celebridades a partir de um vídeo localizado em um bucket do Amazon S3.
import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.S3Object; import software.amazon.awssdk.services.rekognition.model.NotificationChannel; import software.amazon.awssdk.services.rekognition.model.Video; import software.amazon.awssdk.services.rekognition.model.StartCelebrityRecognitionResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.CelebrityRecognitionSortBy; import software.amazon.awssdk.services.rekognition.model.VideoMetadata; import software.amazon.awssdk.services.rekognition.model.CelebrityRecognition; import software.amazon.awssdk.services.rekognition.model.CelebrityDetail; import software.amazon.awssdk.services.rekognition.model.StartCelebrityRecognitionRequest; import software.amazon.awssdk.services.rekognition.model.GetCelebrityRecognitionRequest; import software.amazon.awssdk.services.rekognition.model.GetCelebrityRecognitionResponse; import java.util.List; /** * To run this code example, ensure that you perform the Prerequisites as stated * in the Amazon Rekognition Guide: * https://docs.aws.amazon.com/rekognition/latest/dg/video-analyzing-with-sqs.html * * Also, ensure that set up your development environment, including your * credentials. * * For information, see this documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class VideoCelebrityDetection { private static String startJobId = ""; public static void main(String[] args) { final String usage = """ Usage: <bucket> <video> <topicArn> <roleArn> Where: bucket - The name of the bucket in which the video is located (for example, (for example, myBucket).\s video - The name of video (for example, people.mp4).\s topicArn - The ARN of the Amazon Simple Notification Service (Amazon SNS) topic.\s roleArn - The ARN of the AWS Identity and Access Management (IAM) role to use.\s """; if (args.length != 4) { System.out.println(usage); System.exit(1); } String bucket = args[0]; String video = args[1]; String topicArn = args[2]; String roleArn = args[3]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); NotificationChannel channel = NotificationChannel.builder() .snsTopicArn(topicArn) .roleArn(roleArn) .build(); startCelebrityDetection(rekClient, channel, bucket, video); getCelebrityDetectionResults(rekClient); System.out.println("This example is done!"); rekClient.close(); } public static void startCelebrityDetection(RekognitionClient rekClient, NotificationChannel channel, String bucket, String video) { try { S3Object s3Obj = S3Object.builder() .bucket(bucket) .name(video) .build(); Video vidOb = Video.builder() .s3Object(s3Obj) .build(); StartCelebrityRecognitionRequest recognitionRequest = StartCelebrityRecognitionRequest.builder() .jobTag("Celebrities") .notificationChannel(channel) .video(vidOb) .build(); StartCelebrityRecognitionResponse startCelebrityRecognitionResult = rekClient .startCelebrityRecognition(recognitionRequest); startJobId = startCelebrityRecognitionResult.jobId(); } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } public static void getCelebrityDetectionResults(RekognitionClient rekClient) { try { String paginationToken = null; GetCelebrityRecognitionResponse recognitionResponse = null; boolean finished = false; String status; int yy = 0; do { if (recognitionResponse != null) paginationToken = recognitionResponse.nextToken(); GetCelebrityRecognitionRequest recognitionRequest = GetCelebrityRecognitionRequest.builder() .jobId(startJobId) .nextToken(paginationToken) .sortBy(CelebrityRecognitionSortBy.TIMESTAMP) .maxResults(10) .build(); // Wait until the job succeeds while (!finished) { recognitionResponse = rekClient.getCelebrityRecognition(recognitionRequest); status = recognitionResponse.jobStatusAsString(); if (status.compareTo("SUCCEEDED") == 0) finished = true; else { System.out.println(yy + " status is: " + status); Thread.sleep(1000); } yy++; } finished = false; // Proceed when the job is done - otherwise VideoMetadata is null. VideoMetadata videoMetaData = recognitionResponse.videoMetadata(); System.out.println("Format: " + videoMetaData.format()); System.out.println("Codec: " + videoMetaData.codec()); System.out.println("Duration: " + videoMetaData.durationMillis()); System.out.println("FrameRate: " + videoMetaData.frameRate()); System.out.println("Job"); List<CelebrityRecognition> celebs = recognitionResponse.celebrities(); for (CelebrityRecognition celeb : celebs) { long seconds = celeb.timestamp() / 1000; System.out.print("Sec: " + seconds + " "); CelebrityDetail details = celeb.celebrity(); System.out.println("Name: " + details.name()); System.out.println("Id: " + details.id()); System.out.println(); } } while (recognitionResponse.nextToken() != null); } catch (RekognitionException | InterruptedException e) { System.out.println(e.getMessage()); System.exit(1); } } }
Detecte rótulos em um vídeo por meio de uma operação de detecção de rótulos.
import com.fasterxml.jackson.core.JsonProcessingException; import com.fasterxml.jackson.databind.JsonMappingException; import com.fasterxml.jackson.databind.JsonNode; import com.fasterxml.jackson.databind.ObjectMapper; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.StartLabelDetectionResponse; import software.amazon.awssdk.services.rekognition.model.NotificationChannel; import software.amazon.awssdk.services.rekognition.model.S3Object; import software.amazon.awssdk.services.rekognition.model.Video; import software.amazon.awssdk.services.rekognition.model.StartLabelDetectionRequest; import software.amazon.awssdk.services.rekognition.model.GetLabelDetectionRequest; import software.amazon.awssdk.services.rekognition.model.GetLabelDetectionResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.LabelDetectionSortBy; import software.amazon.awssdk.services.rekognition.model.VideoMetadata; import software.amazon.awssdk.services.rekognition.model.LabelDetection; import software.amazon.awssdk.services.rekognition.model.Label; import software.amazon.awssdk.services.rekognition.model.Instance; import software.amazon.awssdk.services.rekognition.model.Parent; import software.amazon.awssdk.services.sqs.SqsClient; import software.amazon.awssdk.services.sqs.model.Message; import software.amazon.awssdk.services.sqs.model.ReceiveMessageRequest; import software.amazon.awssdk.services.sqs.model.DeleteMessageRequest; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class VideoDetect { private static String startJobId = ""; public static void main(String[] args) { final String usage = """ Usage: <bucket> <video> <queueUrl> <topicArn> <roleArn> Where: bucket - The name of the bucket in which the video is located (for example, (for example, myBucket).\s video - The name of the video (for example, people.mp4).\s queueUrl- The URL of a SQS queue.\s topicArn - The ARN of the Amazon Simple Notification Service (Amazon SNS) topic.\s roleArn - The ARN of the AWS Identity and Access Management (IAM) role to use.\s """; if (args.length != 5) { System.out.println(usage); System.exit(1); } String bucket = args[0]; String video = args[1]; String queueUrl = args[2]; String topicArn = args[3]; String roleArn = args[4]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); SqsClient sqs = SqsClient.builder() .region(Region.US_EAST_1) .build(); NotificationChannel channel = NotificationChannel.builder() .snsTopicArn(topicArn) .roleArn(roleArn) .build(); startLabels(rekClient, channel, bucket, video); getLabelJob(rekClient, sqs, queueUrl); System.out.println("This example is done!"); sqs.close(); rekClient.close(); } public static void startLabels(RekognitionClient rekClient, NotificationChannel channel, String bucket, String video) { try { S3Object s3Obj = S3Object.builder() .bucket(bucket) .name(video) .build(); Video vidOb = Video.builder() .s3Object(s3Obj) .build(); StartLabelDetectionRequest labelDetectionRequest = StartLabelDetectionRequest.builder() .jobTag("DetectingLabels") .notificationChannel(channel) .video(vidOb) .minConfidence(50F) .build(); StartLabelDetectionResponse labelDetectionResponse = rekClient.startLabelDetection(labelDetectionRequest); startJobId = labelDetectionResponse.jobId(); boolean ans = true; String status = ""; int yy = 0; while (ans) { GetLabelDetectionRequest detectionRequest = GetLabelDetectionRequest.builder() .jobId(startJobId) .maxResults(10) .build(); GetLabelDetectionResponse result = rekClient.getLabelDetection(detectionRequest); status = result.jobStatusAsString(); if (status.compareTo("SUCCEEDED") == 0) ans = false; else System.out.println(yy + " status is: " + status); Thread.sleep(1000); yy++; } System.out.println(startJobId + " status is: " + status); } catch (RekognitionException | InterruptedException e) { e.getMessage(); System.exit(1); } } public static void getLabelJob(RekognitionClient rekClient, SqsClient sqs, String queueUrl) { List<Message> messages; ReceiveMessageRequest messageRequest = ReceiveMessageRequest.builder() .queueUrl(queueUrl) .build(); try { messages = sqs.receiveMessage(messageRequest).messages(); if (!messages.isEmpty()) { for (Message message : messages) { String notification = message.body(); // Get the status and job id from the notification ObjectMapper mapper = new ObjectMapper(); JsonNode jsonMessageTree = mapper.readTree(notification); JsonNode messageBodyText = jsonMessageTree.get("Message"); ObjectMapper operationResultMapper = new ObjectMapper(); JsonNode jsonResultTree = operationResultMapper.readTree(messageBodyText.textValue()); JsonNode operationJobId = jsonResultTree.get("JobId"); JsonNode operationStatus = jsonResultTree.get("Status"); System.out.println("Job found in JSON is " + operationJobId); DeleteMessageRequest deleteMessageRequest = DeleteMessageRequest.builder() .queueUrl(queueUrl) .build(); String jobId = operationJobId.textValue(); if (startJobId.compareTo(jobId) == 0) { System.out.println("Job id: " + operationJobId); System.out.println("Status : " + operationStatus.toString()); if (operationStatus.asText().equals("SUCCEEDED")) getResultsLabels(rekClient); else System.out.println("Video analysis failed"); sqs.deleteMessage(deleteMessageRequest); } else { System.out.println("Job received was not job " + startJobId); sqs.deleteMessage(deleteMessageRequest); } } } } catch (RekognitionException e) { e.getMessage(); System.exit(1); } catch (JsonMappingException e) { e.printStackTrace(); } catch (JsonProcessingException e) { e.printStackTrace(); } } // Gets the job results by calling GetLabelDetection private static void getResultsLabels(RekognitionClient rekClient) { int maxResults = 10; String paginationToken = null; GetLabelDetectionResponse labelDetectionResult = null; try { do { if (labelDetectionResult != null) paginationToken = labelDetectionResult.nextToken(); GetLabelDetectionRequest labelDetectionRequest = GetLabelDetectionRequest.builder() .jobId(startJobId) .sortBy(LabelDetectionSortBy.TIMESTAMP) .maxResults(maxResults) .nextToken(paginationToken) .build(); labelDetectionResult = rekClient.getLabelDetection(labelDetectionRequest); VideoMetadata videoMetaData = labelDetectionResult.videoMetadata(); System.out.println("Format: " + videoMetaData.format()); System.out.println("Codec: " + videoMetaData.codec()); System.out.println("Duration: " + videoMetaData.durationMillis()); System.out.println("FrameRate: " + videoMetaData.frameRate()); List<LabelDetection> detectedLabels = labelDetectionResult.labels(); for (LabelDetection detectedLabel : detectedLabels) { long seconds = detectedLabel.timestamp(); Label label = detectedLabel.label(); System.out.println("Millisecond: " + seconds + " "); System.out.println(" Label:" + label.name()); System.out.println(" Confidence:" + detectedLabel.label().confidence().toString()); List<Instance> instances = label.instances(); System.out.println(" Instances of " + label.name()); if (instances.isEmpty()) { System.out.println(" " + "None"); } else { for (Instance instance : instances) { System.out.println(" Confidence: " + instance.confidence().toString()); System.out.println(" Bounding box: " + instance.boundingBox().toString()); } } System.out.println(" Parent labels for " + label.name() + ":"); List<Parent> parents = label.parents(); if (parents.isEmpty()) { System.out.println(" None"); } else { for (Parent parent : parents) { System.out.println(" " + parent.name()); } } System.out.println(); } } while (labelDetectionResult != null && labelDetectionResult.nextToken() != null); } catch (RekognitionException e) { e.getMessage(); System.exit(1); } } }
Detecte faces em um vídeo armazenado em um bucket do Amazon S3.
import com.fasterxml.jackson.core.JsonProcessingException; import com.fasterxml.jackson.databind.JsonMappingException; import com.fasterxml.jackson.databind.JsonNode; import com.fasterxml.jackson.databind.ObjectMapper; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.StartLabelDetectionResponse; import software.amazon.awssdk.services.rekognition.model.NotificationChannel; import software.amazon.awssdk.services.rekognition.model.S3Object; import software.amazon.awssdk.services.rekognition.model.Video; import software.amazon.awssdk.services.rekognition.model.StartLabelDetectionRequest; import software.amazon.awssdk.services.rekognition.model.GetLabelDetectionRequest; import software.amazon.awssdk.services.rekognition.model.GetLabelDetectionResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.LabelDetectionSortBy; import software.amazon.awssdk.services.rekognition.model.VideoMetadata; import software.amazon.awssdk.services.rekognition.model.LabelDetection; import software.amazon.awssdk.services.rekognition.model.Label; import software.amazon.awssdk.services.rekognition.model.Instance; import software.amazon.awssdk.services.rekognition.model.Parent; import software.amazon.awssdk.services.sqs.SqsClient; import software.amazon.awssdk.services.sqs.model.Message; import software.amazon.awssdk.services.sqs.model.ReceiveMessageRequest; import software.amazon.awssdk.services.sqs.model.DeleteMessageRequest; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class VideoDetect { private static String startJobId = ""; public static void main(String[] args) { final String usage = """ Usage: <bucket> <video> <queueUrl> <topicArn> <roleArn> Where: bucket - The name of the bucket in which the video is located (for example, (for example, myBucket).\s video - The name of the video (for example, people.mp4).\s queueUrl- The URL of a SQS queue.\s topicArn - The ARN of the Amazon Simple Notification Service (Amazon SNS) topic.\s roleArn - The ARN of the AWS Identity and Access Management (IAM) role to use.\s """; if (args.length != 5) { System.out.println(usage); System.exit(1); } String bucket = args[0]; String video = args[1]; String queueUrl = args[2]; String topicArn = args[3]; String roleArn = args[4]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); SqsClient sqs = SqsClient.builder() .region(Region.US_EAST_1) .build(); NotificationChannel channel = NotificationChannel.builder() .snsTopicArn(topicArn) .roleArn(roleArn) .build(); startLabels(rekClient, channel, bucket, video); getLabelJob(rekClient, sqs, queueUrl); System.out.println("This example is done!"); sqs.close(); rekClient.close(); } public static void startLabels(RekognitionClient rekClient, NotificationChannel channel, String bucket, String video) { try { S3Object s3Obj = S3Object.builder() .bucket(bucket) .name(video) .build(); Video vidOb = Video.builder() .s3Object(s3Obj) .build(); StartLabelDetectionRequest labelDetectionRequest = StartLabelDetectionRequest.builder() .jobTag("DetectingLabels") .notificationChannel(channel) .video(vidOb) .minConfidence(50F) .build(); StartLabelDetectionResponse labelDetectionResponse = rekClient.startLabelDetection(labelDetectionRequest); startJobId = labelDetectionResponse.jobId(); boolean ans = true; String status = ""; int yy = 0; while (ans) { GetLabelDetectionRequest detectionRequest = GetLabelDetectionRequest.builder() .jobId(startJobId) .maxResults(10) .build(); GetLabelDetectionResponse result = rekClient.getLabelDetection(detectionRequest); status = result.jobStatusAsString(); if (status.compareTo("SUCCEEDED") == 0) ans = false; else System.out.println(yy + " status is: " + status); Thread.sleep(1000); yy++; } System.out.println(startJobId + " status is: " + status); } catch (RekognitionException | InterruptedException e) { e.getMessage(); System.exit(1); } } public static void getLabelJob(RekognitionClient rekClient, SqsClient sqs, String queueUrl) { List<Message> messages; ReceiveMessageRequest messageRequest = ReceiveMessageRequest.builder() .queueUrl(queueUrl) .build(); try { messages = sqs.receiveMessage(messageRequest).messages(); if (!messages.isEmpty()) { for (Message message : messages) { String notification = message.body(); // Get the status and job id from the notification ObjectMapper mapper = new ObjectMapper(); JsonNode jsonMessageTree = mapper.readTree(notification); JsonNode messageBodyText = jsonMessageTree.get("Message"); ObjectMapper operationResultMapper = new ObjectMapper(); JsonNode jsonResultTree = operationResultMapper.readTree(messageBodyText.textValue()); JsonNode operationJobId = jsonResultTree.get("JobId"); JsonNode operationStatus = jsonResultTree.get("Status"); System.out.println("Job found in JSON is " + operationJobId); DeleteMessageRequest deleteMessageRequest = DeleteMessageRequest.builder() .queueUrl(queueUrl) .build(); String jobId = operationJobId.textValue(); if (startJobId.compareTo(jobId) == 0) { System.out.println("Job id: " + operationJobId); System.out.println("Status : " + operationStatus.toString()); if (operationStatus.asText().equals("SUCCEEDED")) getResultsLabels(rekClient); else System.out.println("Video analysis failed"); sqs.deleteMessage(deleteMessageRequest); } else { System.out.println("Job received was not job " + startJobId); sqs.deleteMessage(deleteMessageRequest); } } } } catch (RekognitionException e) { e.getMessage(); System.exit(1); } catch (JsonMappingException e) { e.printStackTrace(); } catch (JsonProcessingException e) { e.printStackTrace(); } } // Gets the job results by calling GetLabelDetection private static void getResultsLabels(RekognitionClient rekClient) { int maxResults = 10; String paginationToken = null; GetLabelDetectionResponse labelDetectionResult = null; try { do { if (labelDetectionResult != null) paginationToken = labelDetectionResult.nextToken(); GetLabelDetectionRequest labelDetectionRequest = GetLabelDetectionRequest.builder() .jobId(startJobId) .sortBy(LabelDetectionSortBy.TIMESTAMP) .maxResults(maxResults) .nextToken(paginationToken) .build(); labelDetectionResult = rekClient.getLabelDetection(labelDetectionRequest); VideoMetadata videoMetaData = labelDetectionResult.videoMetadata(); System.out.println("Format: " + videoMetaData.format()); System.out.println("Codec: " + videoMetaData.codec()); System.out.println("Duration: " + videoMetaData.durationMillis()); System.out.println("FrameRate: " + videoMetaData.frameRate()); List<LabelDetection> detectedLabels = labelDetectionResult.labels(); for (LabelDetection detectedLabel : detectedLabels) { long seconds = detectedLabel.timestamp(); Label label = detectedLabel.label(); System.out.println("Millisecond: " + seconds + " "); System.out.println(" Label:" + label.name()); System.out.println(" Confidence:" + detectedLabel.label().confidence().toString()); List<Instance> instances = label.instances(); System.out.println(" Instances of " + label.name()); if (instances.isEmpty()) { System.out.println(" " + "None"); } else { for (Instance instance : instances) { System.out.println(" Confidence: " + instance.confidence().toString()); System.out.println(" Bounding box: " + instance.boundingBox().toString()); } } System.out.println(" Parent labels for " + label.name() + ":"); List<Parent> parents = label.parents(); if (parents.isEmpty()) { System.out.println(" None"); } else { for (Parent parent : parents) { System.out.println(" " + parent.name()); } } System.out.println(); } } while (labelDetectionResult != null && labelDetectionResult.nextToken() != null); } catch (RekognitionException e) { e.getMessage(); System.exit(1); } } }
Detecte conteúdo impróprio ou ofensivo em um vídeo armazenado em um bucket do Amazon S3.
import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.NotificationChannel; import software.amazon.awssdk.services.rekognition.model.S3Object; import software.amazon.awssdk.services.rekognition.model.Video; import software.amazon.awssdk.services.rekognition.model.StartContentModerationRequest; import software.amazon.awssdk.services.rekognition.model.StartContentModerationResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.GetContentModerationResponse; import software.amazon.awssdk.services.rekognition.model.GetContentModerationRequest; import software.amazon.awssdk.services.rekognition.model.VideoMetadata; import software.amazon.awssdk.services.rekognition.model.ContentModerationDetection; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class VideoDetectInappropriate { private static String startJobId = ""; public static void main(String[] args) { final String usage = """ Usage: <bucket> <video> <topicArn> <roleArn> Where: bucket - The name of the bucket in which the video is located (for example, (for example, myBucket).\s video - The name of video (for example, people.mp4).\s topicArn - The ARN of the Amazon Simple Notification Service (Amazon SNS) topic.\s roleArn - The ARN of the AWS Identity and Access Management (IAM) role to use.\s """; if (args.length != 4) { System.out.println(usage); System.exit(1); } String bucket = args[0]; String video = args[1]; String topicArn = args[2]; String roleArn = args[3]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); NotificationChannel channel = NotificationChannel.builder() .snsTopicArn(topicArn) .roleArn(roleArn) .build(); startModerationDetection(rekClient, channel, bucket, video); getModResults(rekClient); System.out.println("This example is done!"); rekClient.close(); } public static void startModerationDetection(RekognitionClient rekClient, NotificationChannel channel, String bucket, String video) { try { S3Object s3Obj = S3Object.builder() .bucket(bucket) .name(video) .build(); Video vidOb = Video.builder() .s3Object(s3Obj) .build(); StartContentModerationRequest modDetectionRequest = StartContentModerationRequest.builder() .jobTag("Moderation") .notificationChannel(channel) .video(vidOb) .build(); StartContentModerationResponse startModDetectionResult = rekClient .startContentModeration(modDetectionRequest); startJobId = startModDetectionResult.jobId(); } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } public static void getModResults(RekognitionClient rekClient) { try { String paginationToken = null; GetContentModerationResponse modDetectionResponse = null; boolean finished = false; String status; int yy = 0; do { if (modDetectionResponse != null) paginationToken = modDetectionResponse.nextToken(); GetContentModerationRequest modRequest = GetContentModerationRequest.builder() .jobId(startJobId) .nextToken(paginationToken) .maxResults(10) .build(); // Wait until the job succeeds. while (!finished) { modDetectionResponse = rekClient.getContentModeration(modRequest); status = modDetectionResponse.jobStatusAsString(); if (status.compareTo("SUCCEEDED") == 0) finished = true; else { System.out.println(yy + " status is: " + status); Thread.sleep(1000); } yy++; } finished = false; // Proceed when the job is done - otherwise VideoMetadata is null. VideoMetadata videoMetaData = modDetectionResponse.videoMetadata(); System.out.println("Format: " + videoMetaData.format()); System.out.println("Codec: " + videoMetaData.codec()); System.out.println("Duration: " + videoMetaData.durationMillis()); System.out.println("FrameRate: " + videoMetaData.frameRate()); System.out.println("Job"); List<ContentModerationDetection> mods = modDetectionResponse.moderationLabels(); for (ContentModerationDetection mod : mods) { long seconds = mod.timestamp() / 1000; System.out.print("Mod label: " + seconds + " "); System.out.println(mod.moderationLabel().toString()); System.out.println(); } } while (modDetectionResponse != null && modDetectionResponse.nextToken() != null); } catch (RekognitionException | InterruptedException e) { System.out.println(e.getMessage()); System.exit(1); } } }
Detecte segmentos de sinal técnico e segmentos de detecção de tomada em um vídeo armazenado em um bucket do Amazon S3.
import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.S3Object; import software.amazon.awssdk.services.rekognition.model.NotificationChannel; import software.amazon.awssdk.services.rekognition.model.Video; import software.amazon.awssdk.services.rekognition.model.StartShotDetectionFilter; import software.amazon.awssdk.services.rekognition.model.StartTechnicalCueDetectionFilter; import software.amazon.awssdk.services.rekognition.model.StartSegmentDetectionFilters; import software.amazon.awssdk.services.rekognition.model.StartSegmentDetectionRequest; import software.amazon.awssdk.services.rekognition.model.StartSegmentDetectionResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.GetSegmentDetectionResponse; import software.amazon.awssdk.services.rekognition.model.GetSegmentDetectionRequest; import software.amazon.awssdk.services.rekognition.model.VideoMetadata; import software.amazon.awssdk.services.rekognition.model.SegmentDetection; import software.amazon.awssdk.services.rekognition.model.TechnicalCueSegment; import software.amazon.awssdk.services.rekognition.model.ShotSegment; import software.amazon.awssdk.services.rekognition.model.SegmentType; import software.amazon.awssdk.services.sqs.SqsClient; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class VideoDetectSegment { private static String startJobId = ""; public static void main(String[] args) { final String usage = """ Usage: <bucket> <video> <topicArn> <roleArn> Where: bucket - The name of the bucket in which the video is located (for example, (for example, myBucket).\s video - The name of video (for example, people.mp4).\s topicArn - The ARN of the Amazon Simple Notification Service (Amazon SNS) topic.\s roleArn - The ARN of the AWS Identity and Access Management (IAM) role to use.\s """; if (args.length != 4) { System.out.println(usage); System.exit(1); } String bucket = args[0]; String video = args[1]; String topicArn = args[2]; String roleArn = args[3]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); SqsClient sqs = SqsClient.builder() .region(Region.US_EAST_1) .build(); NotificationChannel channel = NotificationChannel.builder() .snsTopicArn(topicArn) .roleArn(roleArn) .build(); startSegmentDetection(rekClient, channel, bucket, video); getSegmentResults(rekClient); System.out.println("This example is done!"); sqs.close(); rekClient.close(); } public static void startSegmentDetection(RekognitionClient rekClient, NotificationChannel channel, String bucket, String video) { try { S3Object s3Obj = S3Object.builder() .bucket(bucket) .name(video) .build(); Video vidOb = Video.builder() .s3Object(s3Obj) .build(); StartShotDetectionFilter cueDetectionFilter = StartShotDetectionFilter.builder() .minSegmentConfidence(60F) .build(); StartTechnicalCueDetectionFilter technicalCueDetectionFilter = StartTechnicalCueDetectionFilter.builder() .minSegmentConfidence(60F) .build(); StartSegmentDetectionFilters filters = StartSegmentDetectionFilters.builder() .shotFilter(cueDetectionFilter) .technicalCueFilter(technicalCueDetectionFilter) .build(); StartSegmentDetectionRequest segDetectionRequest = StartSegmentDetectionRequest.builder() .jobTag("DetectingLabels") .notificationChannel(channel) .segmentTypes(SegmentType.TECHNICAL_CUE, SegmentType.SHOT) .video(vidOb) .filters(filters) .build(); StartSegmentDetectionResponse segDetectionResponse = rekClient.startSegmentDetection(segDetectionRequest); startJobId = segDetectionResponse.jobId(); } catch (RekognitionException e) { e.getMessage(); System.exit(1); } } public static void getSegmentResults(RekognitionClient rekClient) { try { String paginationToken = null; GetSegmentDetectionResponse segDetectionResponse = null; boolean finished = false; String status; int yy = 0; do { if (segDetectionResponse != null) paginationToken = segDetectionResponse.nextToken(); GetSegmentDetectionRequest recognitionRequest = GetSegmentDetectionRequest.builder() .jobId(startJobId) .nextToken(paginationToken) .maxResults(10) .build(); // Wait until the job succeeds. while (!finished) { segDetectionResponse = rekClient.getSegmentDetection(recognitionRequest); status = segDetectionResponse.jobStatusAsString(); if (status.compareTo("SUCCEEDED") == 0) finished = true; else { System.out.println(yy + " status is: " + status); Thread.sleep(1000); } yy++; } finished = false; // Proceed when the job is done - otherwise VideoMetadata is null. List<VideoMetadata> videoMetaData = segDetectionResponse.videoMetadata(); for (VideoMetadata metaData : videoMetaData) { System.out.println("Format: " + metaData.format()); System.out.println("Codec: " + metaData.codec()); System.out.println("Duration: " + metaData.durationMillis()); System.out.println("FrameRate: " + metaData.frameRate()); System.out.println("Job"); } List<SegmentDetection> detectedSegments = segDetectionResponse.segments(); for (SegmentDetection detectedSegment : detectedSegments) { String type = detectedSegment.type().toString(); if (type.contains(SegmentType.TECHNICAL_CUE.toString())) { System.out.println("Technical Cue"); TechnicalCueSegment segmentCue = detectedSegment.technicalCueSegment(); System.out.println("\tType: " + segmentCue.type()); System.out.println("\tConfidence: " + segmentCue.confidence().toString()); } if (type.contains(SegmentType.SHOT.toString())) { System.out.println("Shot"); ShotSegment segmentShot = detectedSegment.shotSegment(); System.out.println("\tIndex " + segmentShot.index()); System.out.println("\tConfidence: " + segmentShot.confidence().toString()); } long seconds = detectedSegment.durationMillis(); System.out.println("\tDuration : " + seconds + " milliseconds"); System.out.println("\tStart time code: " + detectedSegment.startTimecodeSMPTE()); System.out.println("\tEnd time code: " + detectedSegment.endTimecodeSMPTE()); System.out.println("\tDuration time code: " + detectedSegment.durationSMPTE()); System.out.println(); } } while (segDetectionResponse != null && segDetectionResponse.nextToken() != null); } catch (RekognitionException | InterruptedException e) { System.out.println(e.getMessage()); System.exit(1); } } }
Detecte texto em um vídeo armazenado em um bucket do Amazon S3.
import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.S3Object; import software.amazon.awssdk.services.rekognition.model.NotificationChannel; import software.amazon.awssdk.services.rekognition.model.Video; import software.amazon.awssdk.services.rekognition.model.StartTextDetectionRequest; import software.amazon.awssdk.services.rekognition.model.StartTextDetectionResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.GetTextDetectionResponse; import software.amazon.awssdk.services.rekognition.model.GetTextDetectionRequest; import software.amazon.awssdk.services.rekognition.model.VideoMetadata; import software.amazon.awssdk.services.rekognition.model.TextDetectionResult; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class VideoDetectText { private static String startJobId = ""; public static void main(String[] args) { final String usage = """ Usage: <bucket> <video> <topicArn> <roleArn> Where: bucket - The name of the bucket in which the video is located (for example, (for example, myBucket).\s video - The name of video (for example, people.mp4).\s topicArn - The ARN of the Amazon Simple Notification Service (Amazon SNS) topic.\s roleArn - The ARN of the AWS Identity and Access Management (IAM) role to use.\s """; if (args.length != 4) { System.out.println(usage); System.exit(1); } String bucket = args[0]; String video = args[1]; String topicArn = args[2]; String roleArn = args[3]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); NotificationChannel channel = NotificationChannel.builder() .snsTopicArn(topicArn) .roleArn(roleArn) .build(); startTextLabels(rekClient, channel, bucket, video); getTextResults(rekClient); System.out.println("This example is done!"); rekClient.close(); } public static void startTextLabels(RekognitionClient rekClient, NotificationChannel channel, String bucket, String video) { try { S3Object s3Obj = S3Object.builder() .bucket(bucket) .name(video) .build(); Video vidOb = Video.builder() .s3Object(s3Obj) .build(); StartTextDetectionRequest labelDetectionRequest = StartTextDetectionRequest.builder() .jobTag("DetectingLabels") .notificationChannel(channel) .video(vidOb) .build(); StartTextDetectionResponse labelDetectionResponse = rekClient.startTextDetection(labelDetectionRequest); startJobId = labelDetectionResponse.jobId(); } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } public static void getTextResults(RekognitionClient rekClient) { try { String paginationToken = null; GetTextDetectionResponse textDetectionResponse = null; boolean finished = false; String status; int yy = 0; do { if (textDetectionResponse != null) paginationToken = textDetectionResponse.nextToken(); GetTextDetectionRequest recognitionRequest = GetTextDetectionRequest.builder() .jobId(startJobId) .nextToken(paginationToken) .maxResults(10) .build(); // Wait until the job succeeds. while (!finished) { textDetectionResponse = rekClient.getTextDetection(recognitionRequest); status = textDetectionResponse.jobStatusAsString(); if (status.compareTo("SUCCEEDED") == 0) finished = true; else { System.out.println(yy + " status is: " + status); Thread.sleep(1000); } yy++; } finished = false; // Proceed when the job is done - otherwise VideoMetadata is null. VideoMetadata videoMetaData = textDetectionResponse.videoMetadata(); System.out.println("Format: " + videoMetaData.format()); System.out.println("Codec: " + videoMetaData.codec()); System.out.println("Duration: " + videoMetaData.durationMillis()); System.out.println("FrameRate: " + videoMetaData.frameRate()); System.out.println("Job"); List<TextDetectionResult> labels = textDetectionResponse.textDetections(); for (TextDetectionResult detectedText : labels) { System.out.println("Confidence: " + detectedText.textDetection().confidence().toString()); System.out.println("Id : " + detectedText.textDetection().id()); System.out.println("Parent Id: " + detectedText.textDetection().parentId()); System.out.println("Type: " + detectedText.textDetection().type()); System.out.println("Text: " + detectedText.textDetection().detectedText()); System.out.println(); } } while (textDetectionResponse != null && textDetectionResponse.nextToken() != null); } catch (RekognitionException | InterruptedException e) { System.out.println(e.getMessage()); System.exit(1); } } }
Detecte pessoas em um vídeo armazenado em um bucket do Amazon S3.
import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.rekognition.RekognitionClient; import software.amazon.awssdk.services.rekognition.model.S3Object; import software.amazon.awssdk.services.rekognition.model.NotificationChannel; import software.amazon.awssdk.services.rekognition.model.StartPersonTrackingRequest; import software.amazon.awssdk.services.rekognition.model.Video; import software.amazon.awssdk.services.rekognition.model.StartPersonTrackingResponse; import software.amazon.awssdk.services.rekognition.model.RekognitionException; import software.amazon.awssdk.services.rekognition.model.GetPersonTrackingResponse; import software.amazon.awssdk.services.rekognition.model.GetPersonTrackingRequest; import software.amazon.awssdk.services.rekognition.model.VideoMetadata; import software.amazon.awssdk.services.rekognition.model.PersonDetection; import java.util.List; /** * Before running this Java V2 code example, set up your development * environment, including your credentials. * * For more information, see the following documentation topic: * * https://docs.aws.amazon.com/sdk-for-java/latest/developer-guide/get-started.html */ public class VideoPersonDetection { private static String startJobId = ""; public static void main(String[] args) { final String usage = """ Usage: <bucket> <video> <topicArn> <roleArn> Where: bucket - The name of the bucket in which the video is located (for example, (for example, myBucket).\s video - The name of video (for example, people.mp4).\s topicArn - The ARN of the Amazon Simple Notification Service (Amazon SNS) topic.\s roleArn - The ARN of the AWS Identity and Access Management (IAM) role to use.\s """; if (args.length != 4) { System.out.println(usage); System.exit(1); } String bucket = args[0]; String video = args[1]; String topicArn = args[2]; String roleArn = args[3]; Region region = Region.US_EAST_1; RekognitionClient rekClient = RekognitionClient.builder() .region(region) .build(); NotificationChannel channel = NotificationChannel.builder() .snsTopicArn(topicArn) .roleArn(roleArn) .build(); startPersonLabels(rekClient, channel, bucket, video); getPersonDetectionResults(rekClient); System.out.println("This example is done!"); rekClient.close(); } public static void startPersonLabels(RekognitionClient rekClient, NotificationChannel channel, String bucket, String video) { try { S3Object s3Obj = S3Object.builder() .bucket(bucket) .name(video) .build(); Video vidOb = Video.builder() .s3Object(s3Obj) .build(); StartPersonTrackingRequest personTrackingRequest = StartPersonTrackingRequest.builder() .jobTag("DetectingLabels") .video(vidOb) .notificationChannel(channel) .build(); StartPersonTrackingResponse labelDetectionResponse = rekClient.startPersonTracking(personTrackingRequest); startJobId = labelDetectionResponse.jobId(); } catch (RekognitionException e) { System.out.println(e.getMessage()); System.exit(1); } } public static void getPersonDetectionResults(RekognitionClient rekClient) { try { String paginationToken = null; GetPersonTrackingResponse personTrackingResult = null; boolean finished = false; String status; int yy = 0; do { if (personTrackingResult != null) paginationToken = personTrackingResult.nextToken(); GetPersonTrackingRequest recognitionRequest = GetPersonTrackingRequest.builder() .jobId(startJobId) .nextToken(paginationToken) .maxResults(10) .build(); // Wait until the job succeeds while (!finished) { personTrackingResult = rekClient.getPersonTracking(recognitionRequest); status = personTrackingResult.jobStatusAsString(); if (status.compareTo("SUCCEEDED") == 0) finished = true; else { System.out.println(yy + " status is: " + status); Thread.sleep(1000); } yy++; } finished = false; // Proceed when the job is done - otherwise VideoMetadata is null. VideoMetadata videoMetaData = personTrackingResult.videoMetadata(); System.out.println("Format: " + videoMetaData.format()); System.out.println("Codec: " + videoMetaData.codec()); System.out.println("Duration: " + videoMetaData.durationMillis()); System.out.println("FrameRate: " + videoMetaData.frameRate()); System.out.println("Job"); List<PersonDetection> detectedPersons = personTrackingResult.persons(); for (PersonDetection detectedPerson : detectedPersons) { long seconds = detectedPerson.timestamp() / 1000; System.out.print("Sec: " + seconds + " "); System.out.println("Person Identifier: " + detectedPerson.person().index()); System.out.println(); } } while (personTrackingResult != null && personTrackingResult.nextToken() != null); } catch (RekognitionException | InterruptedException e) { System.out.println(e.getMessage()); System.exit(1); } } }
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Para API obter detalhes, consulte os tópicos a seguir em AWS SDK for Java 2.x APIReferência.
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O exemplo de código a seguir mostra como criar um aplicativo que usa o Amazon Rekognition para detectar objetos por categoria em imagens.
- SDKpara Java 2.x
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Mostra como usar o Amazon Rekognition Java para criar um aplicativo que usa o Amazon API Rekognition para identificar objetos por categoria em imagens localizadas em um bucket do Amazon Simple Storage Service (Amazon S3). O aplicativo envia ao administrador uma notificação por e-mail com os resultados usando o Amazon Simple Email Service (AmazonSES).
Para obter o código-fonte completo e instruções sobre como configurar e executar, veja o exemplo completo em GitHub
. Serviços utilizados neste exemplo
Amazon Rekognition
Amazon S3
Amazon SES
O exemplo de código a seguir mostra como detectar pessoas e objetos em um vídeo com o Amazon Rekognition.
- SDKpara Java 2.x
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Mostra como usar o Amazon API Rekognition Java para criar um aplicativo para detectar faces e objetos em vídeos localizados em um bucket do Amazon Simple Storage Service (Amazon S3). O aplicativo envia ao administrador uma notificação por e-mail com os resultados usando o Amazon Simple Email Service (AmazonSES).
Para obter o código-fonte completo e instruções sobre como configurar e executar, veja o exemplo completo em GitHub
. Serviços utilizados neste exemplo
Amazon Rekognition
Amazon S3
Amazon SES