Reconhecimento de logotipos

A API Video Intelligence pode detectar, rastrear e reconhecer a presença de mais de 100.000 marcas e logotipos no conteúdo de vídeo.

Esta página descreve como reconhecer um logotipo em um vídeo usando a API Video Intelligence.

Anotar um vídeo no Cloud Storage

O exemplo de código a seguir demonstra como detectar logotipos em um vídeo no Cloud Storage.

REST

Enviar a solicitação de processo

Para realizar a anotação em um arquivo de vídeo local, codifique em base64 o conteúdo do arquivo de vídeo. Inclua o conteúdo codificado em base64 no campo inputContent da solicitação. Para informações sobre como codificar o conteúdo de um arquivo de vídeo em base64, consulte Codificação em Base64.

Veja a seguir como enviar uma solicitação POST para o método videos:annotate. O exemplo usa o token de acesso de uma conta de serviço configurada para o projeto usando a Google Cloud CLI. Para instruções sobre como instalar a Google Cloud CLI, a configuração de um projeto com uma conta conta e obter um token de acesso, consulte a Guia de início rápido do Video Intelligence.

Antes de usar os dados da solicitação abaixo, faça as substituições a seguir:

  • INPUT_URI: um bucket do Cloud Storage que contém o arquivo que você quer anotar, incluindo o nome do arquivo. É necessário começar com gs://.
    Por exemplo:
    "inputUri": "gs://cloud-videointelligence-demo/assistant.mp4",
  • PROJECT_NUMBER: o identificador numérico do projeto do Google Cloud

Método HTTP e URL:

POST https://videointelligence.googleapis.com/v1/videos:annotate

Corpo JSON da solicitação:

{
    "inputUri":"INPUT_URI",
    "features": ["LOGO_RECOGNITION"]
}

Para enviar a solicitação, expanda uma destas opções:

Você receberá uma resposta JSON semelhante a esta:

{
  "name": "projects/PROJECT_NUMBER/locations/LOCATION_ID/operations/OPERATION_ID"
}

Se a resposta for bem-sucedida, a API Video Intelligence retornará o name para sua operação. O exemplo acima mostra um exemplo dessa resposta, em que project-number é o número do projeto e operation-id é o ID da operação de longa duração criado para a solicitação.

  • PROJECT_NUMBER: o número do seu projeto
  • LOCATION_ID: a região do Cloud em que a anotação deve ocorrer. As regiões de nuvem compatíveis são: us-east1, us-west1, europe-west1 e asia-east1. Se nenhuma região for especificada, uma região será determinada com base na localização do arquivo de vídeo.
  • OPERATION_ID: o ID da operação de longa duração criada para a solicitação e fornecida na resposta quando você iniciou a operação. Por exemplo, 12345...

Ver os resultados

Para receber os resultados da solicitação, envie uma solicitação GET usando o nome da operação retornado da chamada para videos:annotate, conforme mostrado no exemplo a seguir.

Antes de usar os dados da solicitação abaixo, faça as substituições a seguir:

  • OPERATION_NAME: o nome da operação, conforme retornado pela API Video Intelligence. O nome da operação tem o formato projects/PROJECT_NUMBER/locations/LOCATION_ID/operations/OPERATION_ID.
  • PROJECT_NUMBER: o identificador numérico do projeto do Google Cloud

Método HTTP e URL:

GET https://videointelligence.googleapis.com/v1/OPERATION_NAME

Para enviar a solicitação, expanda uma destas opções:

Você receberá uma resposta JSON semelhante a esta:

Fazer o download dos resultados da anotação

Copie a anotação da origem e a cole no bucket de destino: consulte Copiar arquivos e objetos

gsutil cp gcs_uri gs://my-bucket

Observação: se o URI de saída do GCS for fornecido pelo usuário, a anotação será armazenada nesse URI.

Go

Para autenticar no Video Intelligence, configure o Application Default Credentials. Para mais informações, consulte Configurar a autenticação para um ambiente de desenvolvimento local.

import (
	"context"
	"fmt"
	"io"
	"time"

	video "cloud.google.com/go/videointelligence/apiv1"
	videopb "cloud.google.com/go/videointelligence/apiv1/videointelligencepb"
	"github.com/golang/protobuf/ptypes"
)

// logoDetectionGCS analyzes a video and extracts logos with their bounding boxes.
func logoDetectionGCS(w io.Writer, gcsURI string) error {
	// gcsURI := "gs://cloud-samples-data/video/googlework_tiny.mp4"

	ctx := context.Background()

	// Creates a client.
	client, err := video.NewClient(ctx)
	if err != nil {
		return fmt.Errorf("video.NewClient: %w", err)
	}
	defer client.Close()

	ctx, cancel := context.WithTimeout(ctx, time.Second*180)
	defer cancel()

	op, err := client.AnnotateVideo(ctx, &videopb.AnnotateVideoRequest{
		InputUri: gcsURI,
		Features: []videopb.Feature{
			videopb.Feature_LOGO_RECOGNITION,
		},
	})
	if err != nil {
		return fmt.Errorf("AnnotateVideo: %w", err)
	}

	resp, err := op.Wait(ctx)
	if err != nil {
		return fmt.Errorf("Wait: %w", err)
	}

	// Only one video was processed, so get the first result.
	result := resp.GetAnnotationResults()[0]

	// Annotations for list of logos detected, tracked and recognized in video.
	for _, annotation := range result.LogoRecognitionAnnotations {
		fmt.Fprintf(w, "Description: %q\n", annotation.Entity.GetDescription())
		// Opaque entity ID. Some IDs may be available in Google Knowledge
		// Graph Search API (https://developers.google.com/knowledge-graph/).
		if len(annotation.Entity.EntityId) > 0 {
			fmt.Fprintf(w, "\tEntity ID: %q\n", annotation.Entity.GetEntityId())
		}

		// All logo tracks where the recognized logo appears. Each track
		// corresponds to one logo instance appearing in consecutive frames.
		for _, track := range annotation.Tracks {
			// Video segment of a track.
			segment := track.GetSegment()
			start, _ := ptypes.Duration(segment.GetStartTimeOffset())
			end, _ := ptypes.Duration(segment.GetEndTimeOffset())
			fmt.Fprintf(w, "\tSegment: %v to %v\n", start, end)
			fmt.Fprintf(w, "\tConfidence: %f\n", track.GetConfidence())

			// The object with timestamp and attributes per frame in the track.
			for _, timestampedObject := range track.TimestampedObjects {
				// Normalized Bounding box in a frame, where the object is
				// located.
				box := timestampedObject.GetNormalizedBoundingBox()
				fmt.Fprintf(w, "\tBounding box position:\n")
				fmt.Fprintf(w, "\t\tleft  : %f\n", box.GetLeft())
				fmt.Fprintf(w, "\t\ttop   : %f\n", box.GetTop())
				fmt.Fprintf(w, "\t\tright : %f\n", box.GetRight())
				fmt.Fprintf(w, "\t\tbottom: %f\n", box.GetBottom())

				// Optional. The attributes of the object in the bounding box.
				for _, attribute := range timestampedObject.Attributes {
					fmt.Fprintf(w, "\t\t\tName: %q\n", attribute.GetName())
					fmt.Fprintf(w, "\t\t\tConfidence: %f\n", attribute.GetConfidence())
					fmt.Fprintf(w, "\t\t\tValue: %q\n", attribute.GetValue())
				}
			}

			// Optional. Attributes in the track level.
			for _, trackAttribute := range track.Attributes {
				fmt.Fprintf(w, "\t\tName: %q\n", trackAttribute.GetName())
				fmt.Fprintf(w, "\t\tConfidence: %f\n", trackAttribute.GetConfidence())
				fmt.Fprintf(w, "\t\tValue: %q\n", trackAttribute.GetValue())
			}
		}

		// All video segments where the recognized logo appears. There might be
		// multiple instances of the same logo class appearing in one VideoSegment.
		for _, segment := range annotation.Segments {
			start, _ := ptypes.Duration(segment.GetStartTimeOffset())
			end, _ := ptypes.Duration(segment.GetEndTimeOffset())
			fmt.Fprintf(w, "\tSegment: %v to %v\n", start, end)
		}
	}

	return nil
}

Java

Para autenticar no Video Intelligence, configure o Application Default Credentials. Para mais informações, consulte Configurar a autenticação para um ambiente de desenvolvimento local.


import com.google.api.gax.longrunning.OperationFuture;
import com.google.cloud.videointelligence.v1.AnnotateVideoProgress;
import com.google.cloud.videointelligence.v1.AnnotateVideoRequest;
import com.google.cloud.videointelligence.v1.AnnotateVideoResponse;
import com.google.cloud.videointelligence.v1.DetectedAttribute;
import com.google.cloud.videointelligence.v1.Entity;
import com.google.cloud.videointelligence.v1.Feature;
import com.google.cloud.videointelligence.v1.LogoRecognitionAnnotation;
import com.google.cloud.videointelligence.v1.NormalizedBoundingBox;
import com.google.cloud.videointelligence.v1.TimestampedObject;
import com.google.cloud.videointelligence.v1.Track;
import com.google.cloud.videointelligence.v1.VideoAnnotationResults;
import com.google.cloud.videointelligence.v1.VideoIntelligenceServiceClient;
import com.google.cloud.videointelligence.v1.VideoSegment;
import com.google.protobuf.Duration;
import java.io.IOException;
import java.util.concurrent.ExecutionException;
import java.util.concurrent.TimeUnit;
import java.util.concurrent.TimeoutException;

public class LogoDetectionGcs {

  public static void detectLogoGcs() throws Exception {
    // TODO(developer): Replace these variables before running the sample.
    String gcsUri = "gs://YOUR_BUCKET_ID/path/to/your/video.mp4";
    detectLogoGcs(gcsUri);
  }

  public static void detectLogoGcs(String inputUri)
      throws IOException, ExecutionException, InterruptedException, TimeoutException {
    // Initialize client that will be used to send requests. This client only needs to be created
    // once, and can be reused for multiple requests. After completing all of your requests, call
    // the "close" method on the client to safely clean up any remaining background resources.
    try (VideoIntelligenceServiceClient client = VideoIntelligenceServiceClient.create()) {
      // Create the request
      AnnotateVideoRequest request =
          AnnotateVideoRequest.newBuilder()
              .setInputUri(inputUri)
              .addFeatures(Feature.LOGO_RECOGNITION)
              .build();

      // asynchronously perform object tracking on videos
      OperationFuture<AnnotateVideoResponse, AnnotateVideoProgress> future =
          client.annotateVideoAsync(request);

      System.out.println("Waiting for operation to complete...");
      // The first result is retrieved because a single video was processed.
      AnnotateVideoResponse response = future.get(600, TimeUnit.SECONDS);
      VideoAnnotationResults annotationResult = response.getAnnotationResults(0);

      // Annotations for list of logos detected, tracked and recognized in video.
      for (LogoRecognitionAnnotation logoRecognitionAnnotation :
          annotationResult.getLogoRecognitionAnnotationsList()) {
        Entity entity = logoRecognitionAnnotation.getEntity();
        // Opaque entity ID. Some IDs may be available in
        // [Google Knowledge Graph Search API](https://developers.google.com/knowledge-graph/).
        System.out.printf("Entity Id : %s\n", entity.getEntityId());
        System.out.printf("Description : %s\n", entity.getDescription());
        // All logo tracks where the recognized logo appears. Each track corresponds to one logo
        // instance appearing in consecutive frames.
        for (Track track : logoRecognitionAnnotation.getTracksList()) {

          // Video segment of a track.
          Duration startTimeOffset = track.getSegment().getStartTimeOffset();
          System.out.printf(
              "\n\tStart Time Offset: %s.%s\n",
              startTimeOffset.getSeconds(), startTimeOffset.getNanos());
          Duration endTimeOffset = track.getSegment().getEndTimeOffset();
          System.out.printf(
              "\tEnd Time Offset: %s.%s\n", endTimeOffset.getSeconds(), endTimeOffset.getNanos());
          System.out.printf("\tConfidence: %s\n", track.getConfidence());

          // The object with timestamp and attributes per frame in the track.
          for (TimestampedObject timestampedObject : track.getTimestampedObjectsList()) {

            // Normalized Bounding box in a frame, where the object is located.
            NormalizedBoundingBox normalizedBoundingBox =
                timestampedObject.getNormalizedBoundingBox();
            System.out.printf("\n\t\tLeft: %s\n", normalizedBoundingBox.getLeft());
            System.out.printf("\t\tTop: %s\n", normalizedBoundingBox.getTop());
            System.out.printf("\t\tRight: %s\n", normalizedBoundingBox.getRight());
            System.out.printf("\t\tBottom: %s\n", normalizedBoundingBox.getBottom());

            // Optional. The attributes of the object in the bounding box.
            for (DetectedAttribute attribute : timestampedObject.getAttributesList()) {
              System.out.printf("\n\t\t\tName: %s\n", attribute.getName());
              System.out.printf("\t\t\tConfidence: %s\n", attribute.getConfidence());
              System.out.printf("\t\t\tValue: %s\n", attribute.getValue());
            }
          }

          // Optional. Attributes in the track level.
          for (DetectedAttribute trackAttribute : track.getAttributesList()) {
            System.out.printf("\n\t\tName : %s\n", trackAttribute.getName());
            System.out.printf("\t\tConfidence : %s\n", trackAttribute.getConfidence());
            System.out.printf("\t\tValue : %s\n", trackAttribute.getValue());
          }
        }

        // All video segments where the recognized logo appears. There might be multiple instances
        // of the same logo class appearing in one VideoSegment.
        for (VideoSegment segment : logoRecognitionAnnotation.getSegmentsList()) {
          System.out.printf(
              "\n\tStart Time Offset : %s.%s\n",
              segment.getStartTimeOffset().getSeconds(), segment.getStartTimeOffset().getNanos());
          System.out.printf(
              "\tEnd Time Offset : %s.%s\n",
              segment.getEndTimeOffset().getSeconds(), segment.getEndTimeOffset().getNanos());
        }
      }
    }
  }
}

Node.js

Para autenticar no Video Intelligence, configure o Application Default Credentials. Para mais informações, consulte Configurar a autenticação para um ambiente de desenvolvimento local.

/**
 * TODO(developer): Uncomment these variables before running the sample.
 */
// const inputUri = 'gs://cloud-samples-data/video/googlework_short.mp4';

// Imports the Google Cloud client libraries
const Video = require('@google-cloud/video-intelligence');

// Instantiates a client
const client = new Video.VideoIntelligenceServiceClient();

// Performs asynchronous video annotation for logo recognition on a file hosted in GCS.
async function detectLogoGcs() {
  // Build the request with the input uri and logo recognition feature.
  const request = {
    inputUri: inputUri,
    features: ['LOGO_RECOGNITION'],
  };

  // Make the asynchronous request
  const [operation] = await client.annotateVideo(request);

  // Wait for the results
  const [response] = await operation.promise();

  // Get the first response, since we sent only one video.
  const annotationResult = response.annotationResults[0];
  for (const logoRecognitionAnnotation of annotationResult.logoRecognitionAnnotations) {
    const entity = logoRecognitionAnnotation.entity;
    // Opaque entity ID. Some IDs may be available in
    // [Google Knowledge Graph Search API](https://developers.google.com/knowledge-graph/).
    console.log(`Entity Id: ${entity.entityId}`);
    console.log(`Description: ${entity.description}`);

    // All logo tracks where the recognized logo appears.
    // Each track corresponds to one logo instance appearing in consecutive frames.
    for (const track of logoRecognitionAnnotation.tracks) {
      console.log(
        `\n\tStart Time Offset: ${track.segment.startTimeOffset.seconds}.${track.segment.startTimeOffset.nanos}`
      );
      console.log(
        `\tEnd Time Offset: ${track.segment.endTimeOffset.seconds}.${track.segment.endTimeOffset.nanos}`
      );
      console.log(`\tConfidence: ${track.confidence}`);

      // The object with timestamp and attributes per frame in the track.
      for (const timestampedObject of track.timestampedObjects) {
        // Normalized Bounding box in a frame, where the object is located.
        const normalizedBoundingBox = timestampedObject.normalizedBoundingBox;
        console.log(`\n\t\tLeft: ${normalizedBoundingBox.left}`);
        console.log(`\t\tTop: ${normalizedBoundingBox.top}`);
        console.log(`\t\tRight: ${normalizedBoundingBox.right}`);
        console.log(`\t\tBottom: ${normalizedBoundingBox.bottom}`);
        // Optional. The attributes of the object in the bounding box.
        for (const attribute of timestampedObject.attributes) {
          console.log(`\n\t\t\tName: ${attribute.name}`);
          console.log(`\t\t\tConfidence: ${attribute.confidence}`);
          console.log(`\t\t\tValue: ${attribute.value}`);
        }
      }

      // Optional. Attributes in the track level.
      for (const trackAttribute of track.attributes) {
        console.log(`\n\t\tName: ${trackAttribute.name}`);
        console.log(`\t\tConfidence: ${trackAttribute.confidence}`);
        console.log(`\t\tValue: ${trackAttribute.value}`);
      }
    }

    // All video segments where the recognized logo appears.
    // There might be multiple instances of the same logo class appearing in one VideoSegment.
    for (const segment of logoRecognitionAnnotation.segments) {
      console.log(
        `\n\tStart Time Offset: ${segment.startTimeOffset.seconds}.${segment.startTimeOffset.nanos}`
      );
      console.log(
        `\tEnd Time Offset: ${segment.endTimeOffset.seconds}.${segment.endTimeOffset.nanos}`
      );
    }
  }
}

detectLogoGcs();

Python

Para autenticar no Video Intelligence, configure o Application Default Credentials. Para mais informações, consulte Configurar a autenticação para um ambiente de desenvolvimento local.


from google.cloud import videointelligence


def detect_logo_gcs(input_uri="gs://YOUR_BUCKET_ID/path/to/your/file.mp4"):
    client = videointelligence.VideoIntelligenceServiceClient()

    features = [videointelligence.Feature.LOGO_RECOGNITION]

    operation = client.annotate_video(
        request={"features": features, "input_uri": input_uri}
    )

    print("Waiting for operation to complete...")
    response = operation.result()

    # Get the first response, since we sent only one video.
    annotation_result = response.annotation_results[0]

    # Annotations for list of logos detected, tracked and recognized in video.
    for logo_recognition_annotation in annotation_result.logo_recognition_annotations:
        entity = logo_recognition_annotation.entity

        # Opaque entity ID. Some IDs may be available in [Google Knowledge Graph
        # Search API](https://developers.google.com/knowledge-graph/).
        print("Entity Id : {}".format(entity.entity_id))

        print("Description : {}".format(entity.description))

        # All logo tracks where the recognized logo appears. Each track corresponds
        # to one logo instance appearing in consecutive frames.
        for track in logo_recognition_annotation.tracks:
            # Video segment of a track.
            print(
                "\n\tStart Time Offset : {}.{}".format(
                    track.segment.start_time_offset.seconds,
                    track.segment.start_time_offset.microseconds * 1000,
                )
            )
            print(
                "\tEnd Time Offset : {}.{}".format(
                    track.segment.end_time_offset.seconds,
                    track.segment.end_time_offset.microseconds * 1000,
                )
            )
            print("\tConfidence : {}".format(track.confidence))

            # The object with timestamp and attributes per frame in the track.
            for timestamped_object in track.timestamped_objects:
                # Normalized Bounding box in a frame, where the object is located.
                normalized_bounding_box = timestamped_object.normalized_bounding_box
                print("\n\t\tLeft : {}".format(normalized_bounding_box.left))
                print("\t\tTop : {}".format(normalized_bounding_box.top))
                print("\t\tRight : {}".format(normalized_bounding_box.right))
                print("\t\tBottom : {}".format(normalized_bounding_box.bottom))

                # Optional. The attributes of the object in the bounding box.
                for attribute in timestamped_object.attributes:
                    print("\n\t\t\tName : {}".format(attribute.name))
                    print("\t\t\tConfidence : {}".format(attribute.confidence))
                    print("\t\t\tValue : {}".format(attribute.value))

            # Optional. Attributes in the track level.
            for track_attribute in track.attributes:
                print("\n\t\tName : {}".format(track_attribute.name))
                print("\t\tConfidence : {}".format(track_attribute.confidence))
                print("\t\tValue : {}".format(track_attribute.value))

        # All video segments where the recognized logo appears. There might be
        # multiple instances of the same logo class appearing in one VideoSegment.
        for segment in logo_recognition_annotation.segments:
            print(
                "\n\tStart Time Offset : {}.{}".format(
                    segment.start_time_offset.seconds,
                    segment.start_time_offset.microseconds * 1000,
                )
            )
            print(
                "\tEnd Time Offset : {}.{}".format(
                    segment.end_time_offset.seconds,
                    segment.end_time_offset.microseconds * 1000,
                )
            )

Outras linguagens

C#: Siga as Instruções de configuração do C# na página de bibliotecas de cliente e acesse a Documentação de referência do Video Intelligence para .NET.

PHP Siga as Instruções de configuração para PHP na página de bibliotecas de cliente e acesse a Documentação de referência do Video Intelligence para PHP.

Ruby: Siga as Instruções de configuração do Ruby na página de bibliotecas de cliente e acesse a Documentação de referência do Video Intelligence para Ruby.

Anotar um vídeo local

O exemplo de código a seguir demonstra como detectar logotipos em um vídeo local .

REST

Enviar solicitação de anotação de vídeo

Para realizar a anotação em um arquivo de vídeo local, codifique em base64 o conteúdo do arquivo de vídeo. Inclua o conteúdo codificado em base64 no campo inputContent da solicitação. Para informações sobre como codificar o conteúdo de um arquivo de vídeo em base64, consulte Codificação em Base64.

Veja a seguir como enviar uma solicitação POST para o método videos:annotate. Nele, é usado o token de acesso de uma conta de serviço configurada para o projeto com a Google Cloud CLI. Para instruções sobre como instalar a Google Cloud CLI, configurar um projeto com uma conta de serviço e, para conseguir um token de acesso, consulte Guia de início rápido da API Video Intelligence

Antes de usar os dados da solicitação abaixo, faça as substituições a seguir:

  • "inputContent": BASE64_ENCODED_CONTENT
    Por exemplo:
    "UklGRg41AwBBVkkgTElTVAwBAABoZHJsYXZpaDgAAAA1ggAAxPMBAAAAAAAQCAA..."
  • LANGUAGE_CODE: [opcional] consulte idiomas compatíveis
  • PROJECT_NUMBER: o identificador numérico do projeto do Google Cloud

Método HTTP e URL:

POST https://videointelligence.googleapis.com/v1/videos:annotate

Corpo JSON da solicitação:

{
  "inputContent": "BASE64_ENCODED_CONTENT",
  "features": ["LOGO_RECOGNITION"],
  "videoContext": {
  }
}

Para enviar a solicitação, expanda uma destas opções:

Você receberá uma resposta JSON semelhante a esta:

{
  "name": "projects/PROJECT_NUMBER/locations/LOCATION_ID/operations/OPERATION_ID"
}

Se a resposta for bem-sucedida, a API Video Intelligence retornará o name para sua operação. O exemplo acima mostra um exemplo dessa resposta, em que project-number é o nome do projeto e operation-id é o ID da operação de longa duração criado para a solicitação.

  • OPERATION_ID: fornecido na resposta quando você iniciou a operação, por exemplo, 12345....

Ver os resultados de anotação

Para recuperar o resultado da operação, faça uma solicitação GET usando o nome da operação retornado da chamada para videos:annotate, conforme mostrado no exemplo a seguir.

Antes de usar os dados da solicitação abaixo, faça as substituições a seguir:

  • PROJECT_NUMBER: o identificador numérico do projeto do Google Cloud

Método HTTP e URL:

GET https://videointelligence.googleapis.com/v1/OPERATION_NAME

Para enviar a solicitação, expanda uma destas opções:

Você receberá uma resposta JSON semelhante a esta:

As anotações de detecção de texto são retornadas como uma lista de textAnnotations. Observação: o campo done é retornado somente quando o valor dele é True. Ele não é incluído nas respostas de uma operação não concluída.

Go

Para autenticar no Video Intelligence, configure o Application Default Credentials. Para mais informações, consulte Configurar a autenticação para um ambiente de desenvolvimento local.

import (
	"context"
	"fmt"
	"io"
	"os"
	"time"

	video "cloud.google.com/go/videointelligence/apiv1"
	videopb "cloud.google.com/go/videointelligence/apiv1/videointelligencepb"
	"github.com/golang/protobuf/ptypes"
)

// logoDetection analyzes a video and extracts logos with their bounding boxes.
func logoDetection(w io.Writer, filename string) error {
	// filename := "../testdata/googlework_short.mp4"

	ctx := context.Background()

	// Creates a client.
	client, err := video.NewClient(ctx)
	if err != nil {
		return fmt.Errorf("video.NewClient: %w", err)
	}
	defer client.Close()

	ctx, cancel := context.WithTimeout(ctx, time.Second*180)
	defer cancel()

	fileBytes, err := os.ReadFile(filename)
	if err != nil {
		return fmt.Errorf("os.ReadFile: %w", err)
	}

	op, err := client.AnnotateVideo(ctx, &videopb.AnnotateVideoRequest{
		InputContent: fileBytes,
		Features: []videopb.Feature{
			videopb.Feature_LOGO_RECOGNITION,
		},
	})
	if err != nil {
		return fmt.Errorf("AnnotateVideo: %w", err)
	}

	resp, err := op.Wait(ctx)
	if err != nil {
		return fmt.Errorf("Wait: %w", err)
	}

	// Only one video was processed, so get the first result.
	result := resp.GetAnnotationResults()[0]

	// Annotations for list of logos detected, tracked and recognized in video.
	for _, annotation := range result.LogoRecognitionAnnotations {
		fmt.Fprintf(w, "Description: %q\n", annotation.Entity.GetDescription())
		// Opaque entity ID. Some IDs may be available in Google Knowledge
		// Graph Search API (https://developers.google.com/knowledge-graph/).
		if len(annotation.Entity.EntityId) > 0 {
			fmt.Fprintf(w, "\tEntity ID: %q\n", annotation.Entity.GetEntityId())
		}

		// All logo tracks where the recognized logo appears. Each track
		// corresponds to one logo instance appearing in consecutive frames.
		for _, track := range annotation.Tracks {
			// Video segment of a track.
			segment := track.GetSegment()
			start, _ := ptypes.Duration(segment.GetStartTimeOffset())
			end, _ := ptypes.Duration(segment.GetEndTimeOffset())
			fmt.Fprintf(w, "\tSegment: %v to %v\n", start, end)
			fmt.Fprintf(w, "\tConfidence: %f\n", track.GetConfidence())

			// The object with timestamp and attributes per frame in the track.
			for _, timestampedObject := range track.TimestampedObjects {
				// Normalized Bounding box in a frame, where the object is
				// located.
				box := timestampedObject.GetNormalizedBoundingBox()
				fmt.Fprintf(w, "\tBounding box position:\n")
				fmt.Fprintf(w, "\t\tleft  : %f\n", box.GetLeft())
				fmt.Fprintf(w, "\t\ttop   : %f\n", box.GetTop())
				fmt.Fprintf(w, "\t\tright : %f\n", box.GetRight())
				fmt.Fprintf(w, "\t\tbottom: %f\n", box.GetBottom())

				// Optional. The attributes of the object in the bounding box.
				for _, attribute := range timestampedObject.Attributes {
					fmt.Fprintf(w, "\t\t\tName: %q\n", attribute.GetName())
					fmt.Fprintf(w, "\t\t\tConfidence: %f\n", attribute.GetConfidence())
					fmt.Fprintf(w, "\t\t\tValue: %q\n", attribute.GetValue())
				}
			}

			// Optional. Attributes in the track level.
			for _, trackAttribute := range track.Attributes {
				fmt.Fprintf(w, "\t\tName: %q\n", trackAttribute.GetName())
				fmt.Fprintf(w, "\t\tConfidence: %f\n", trackAttribute.GetConfidence())
				fmt.Fprintf(w, "\t\tValue: %q\n", trackAttribute.GetValue())
			}
		}

		// All video segments where the recognized logo appears. There might be
		// multiple instances of the same logo class appearing in one VideoSegment.
		for _, segment := range annotation.Segments {
			start, _ := ptypes.Duration(segment.GetStartTimeOffset())
			end, _ := ptypes.Duration(segment.GetEndTimeOffset())
			fmt.Fprintf(w, "\tSegment: %v to %v\n", start, end)
		}
	}

	return nil
}

Java

Para autenticar no Video Intelligence, configure o Application Default Credentials. Para mais informações, consulte Configurar a autenticação para um ambiente de desenvolvimento local.


import com.google.api.gax.longrunning.OperationFuture;
import com.google.cloud.videointelligence.v1.AnnotateVideoProgress;
import com.google.cloud.videointelligence.v1.AnnotateVideoRequest;
import com.google.cloud.videointelligence.v1.AnnotateVideoResponse;
import com.google.cloud.videointelligence.v1.DetectedAttribute;
import com.google.cloud.videointelligence.v1.Entity;
import com.google.cloud.videointelligence.v1.Feature;
import com.google.cloud.videointelligence.v1.LogoRecognitionAnnotation;
import com.google.cloud.videointelligence.v1.NormalizedBoundingBox;
import com.google.cloud.videointelligence.v1.TimestampedObject;
import com.google.cloud.videointelligence.v1.Track;
import com.google.cloud.videointelligence.v1.VideoAnnotationResults;
import com.google.cloud.videointelligence.v1.VideoIntelligenceServiceClient;
import com.google.cloud.videointelligence.v1.VideoSegment;
import com.google.protobuf.ByteString;
import com.google.protobuf.Duration;
import java.io.IOException;
import java.nio.file.Files;
import java.nio.file.Path;
import java.nio.file.Paths;
import java.util.concurrent.ExecutionException;
import java.util.concurrent.TimeUnit;
import java.util.concurrent.TimeoutException;

public class LogoDetection {

  public static void detectLogo() throws Exception {
    // TODO(developer): Replace these variables before running the sample.
    String localFilePath = "path/to/your/video.mp4";
    detectLogo(localFilePath);
  }

  public static void detectLogo(String filePath)
      throws IOException, ExecutionException, InterruptedException, TimeoutException {
    // Initialize client that will be used to send requests. This client only needs to be created
    // once, and can be reused for multiple requests. After completing all of your requests, call
    // the "close" method on the client to safely clean up any remaining background resources.
    try (VideoIntelligenceServiceClient client = VideoIntelligenceServiceClient.create()) {
      // Read file
      Path path = Paths.get(filePath);
      byte[] data = Files.readAllBytes(path);
      // Create the request
      AnnotateVideoRequest request =
          AnnotateVideoRequest.newBuilder()
              .setInputContent(ByteString.copyFrom(data))
              .addFeatures(Feature.LOGO_RECOGNITION)
              .build();

      // asynchronously perform object tracking on videos
      OperationFuture<AnnotateVideoResponse, AnnotateVideoProgress> future =
          client.annotateVideoAsync(request);

      System.out.println("Waiting for operation to complete...");
      // The first result is retrieved because a single video was processed.
      AnnotateVideoResponse response = future.get(300, TimeUnit.SECONDS);
      VideoAnnotationResults annotationResult = response.getAnnotationResults(0);

      // Annotations for list of logos detected, tracked and recognized in video.
      for (LogoRecognitionAnnotation logoRecognitionAnnotation :
          annotationResult.getLogoRecognitionAnnotationsList()) {
        Entity entity = logoRecognitionAnnotation.getEntity();
        // Opaque entity ID. Some IDs may be available in
        // [Google Knowledge Graph Search API](https://developers.google.com/knowledge-graph/).
        System.out.printf("Entity Id : %s\n", entity.getEntityId());
        System.out.printf("Description : %s\n", entity.getDescription());
        // All logo tracks where the recognized logo appears. Each track corresponds to one logo
        // instance appearing in consecutive frames.
        for (Track track : logoRecognitionAnnotation.getTracksList()) {

          // Video segment of a track.
          Duration startTimeOffset = track.getSegment().getStartTimeOffset();
          System.out.printf(
              "\n\tStart Time Offset: %s.%s\n",
              startTimeOffset.getSeconds(), startTimeOffset.getNanos());
          Duration endTimeOffset = track.getSegment().getEndTimeOffset();
          System.out.printf(
              "\tEnd Time Offset: %s.%s\n", endTimeOffset.getSeconds(), endTimeOffset.getNanos());
          System.out.printf("\tConfidence: %s\n", track.getConfidence());

          // The object with timestamp and attributes per frame in the track.
          for (TimestampedObject timestampedObject : track.getTimestampedObjectsList()) {

            // Normalized Bounding box in a frame, where the object is located.
            NormalizedBoundingBox normalizedBoundingBox =
                timestampedObject.getNormalizedBoundingBox();
            System.out.printf("\n\t\tLeft: %s\n", normalizedBoundingBox.getLeft());
            System.out.printf("\t\tTop: %s\n", normalizedBoundingBox.getTop());
            System.out.printf("\t\tRight: %s\n", normalizedBoundingBox.getRight());
            System.out.printf("\t\tBottom: %s\n", normalizedBoundingBox.getBottom());

            // Optional. The attributes of the object in the bounding box.
            for (DetectedAttribute attribute : timestampedObject.getAttributesList()) {
              System.out.printf("\n\t\t\tName: %s\n", attribute.getName());
              System.out.printf("\t\t\tConfidence: %s\n", attribute.getConfidence());
              System.out.printf("\t\t\tValue: %s\n", attribute.getValue());
            }
          }

          // Optional. Attributes in the track level.
          for (DetectedAttribute trackAttribute : track.getAttributesList()) {
            System.out.printf("\n\t\tName : %s\n", trackAttribute.getName());
            System.out.printf("\t\tConfidence : %s\n", trackAttribute.getConfidence());
            System.out.printf("\t\tValue : %s\n", trackAttribute.getValue());
          }
        }

        // All video segments where the recognized logo appears. There might be multiple instances
        // of the same logo class appearing in one VideoSegment.
        for (VideoSegment segment : logoRecognitionAnnotation.getSegmentsList()) {
          System.out.printf(
              "\n\tStart Time Offset : %s.%s\n",
              segment.getStartTimeOffset().getSeconds(), segment.getStartTimeOffset().getNanos());
          System.out.printf(
              "\tEnd Time Offset : %s.%s\n",
              segment.getEndTimeOffset().getSeconds(), segment.getEndTimeOffset().getNanos());
        }
      }
    }
  }
}

Node.js

Para autenticar no Video Intelligence, configure o Application Default Credentials. Para mais informações, consulte Configurar a autenticação para um ambiente de desenvolvimento local.

/**
 * TODO(developer): Uncomment these variables before running the sample.
 */
// const localFilePath = 'path/to/your/video.mp4'

// Imports the Google Cloud client libraries
const Video = require('@google-cloud/video-intelligence');
const fs = require('fs');

// Instantiates a client
const client = new Video.VideoIntelligenceServiceClient();

// Performs asynchronous video annotation for logo recognition on a file.
async function detectLogo() {
  const inputContent = fs.readFileSync(localFilePath).toString('base64');

  // Build the request with the input content and logo recognition feature.
  const request = {
    inputContent: inputContent,
    features: ['LOGO_RECOGNITION'],
  };

  // Make the asynchronous request
  const [operation] = await client.annotateVideo(request);

  // Wait for the results
  const [response] = await operation.promise();

  // Get the first response, since we sent only one video.
  const annotationResult = response.annotationResults[0];
  for (const logoRecognitionAnnotation of annotationResult.logoRecognitionAnnotations) {
    const entity = logoRecognitionAnnotation.entity;
    // Opaque entity ID. Some IDs may be available in
    // [Google Knowledge Graph Search API](https://developers.google.com/knowledge-graph/).
    console.log(`Entity Id: ${entity.entityId}`);
    console.log(`Description: ${entity.description}`);

    // All logo tracks where the recognized logo appears.
    // Each track corresponds to one logo instance appearing in consecutive frames.
    for (const track of logoRecognitionAnnotation.tracks) {
      console.log(
        `\n\tStart Time Offset: ${track.segment.startTimeOffset.seconds}.${track.segment.startTimeOffset.nanos}`
      );
      console.log(
        `\tEnd Time Offset: ${track.segment.endTimeOffset.seconds}.${track.segment.endTimeOffset.nanos}`
      );
      console.log(`\tConfidence: ${track.confidence}`);

      // The object with timestamp and attributes per frame in the track.
      for (const timestampedObject of track.timestampedObjects) {
        // Normalized Bounding box in a frame, where the object is located.
        const normalizedBoundingBox = timestampedObject.normalizedBoundingBox;
        console.log(`\n\t\tLeft: ${normalizedBoundingBox.left}`);
        console.log(`\t\tTop: ${normalizedBoundingBox.top}`);
        console.log(`\t\tRight: ${normalizedBoundingBox.right}`);
        console.log(`\t\tBottom: ${normalizedBoundingBox.bottom}`);
        // Optional. The attributes of the object in the bounding box.
        for (const attribute of timestampedObject.attributes) {
          console.log(`\n\t\t\tName: ${attribute.name}`);
          console.log(`\t\t\tConfidence: ${attribute.confidence}`);
          console.log(`\t\t\tValue: ${attribute.value}`);
        }
      }

      // Optional. Attributes in the track level.
      for (const trackAttribute of track.attributes) {
        console.log(`\n\t\tName: ${trackAttribute.name}`);
        console.log(`\t\tConfidence: ${trackAttribute.confidence}`);
        console.log(`\t\tValue: ${trackAttribute.value}`);
      }
    }

    // All video segments where the recognized logo appears.
    // There might be multiple instances of the same logo class appearing in one VideoSegment.
    for (const segment of logoRecognitionAnnotation.segments) {
      console.log(
        `\n\tStart Time Offset: ${segment.startTimeOffset.seconds}.${segment.startTimeOffset.nanos}`
      );
      console.log(
        `\tEnd Time Offset: ${segment.endTimeOffset.seconds}.${segment.endTimeOffset.nanos}`
      );
    }
  }
}

detectLogo();

Python

Para autenticar no Video Intelligence, configure o Application Default Credentials. Para mais informações, consulte Configurar a autenticação para um ambiente de desenvolvimento local.

import io

from google.cloud import videointelligence


def detect_logo(local_file_path="path/to/your/video.mp4"):
    """Performs asynchronous video annotation for logo recognition on a local file."""

    client = videointelligence.VideoIntelligenceServiceClient()

    with io.open(local_file_path, "rb") as f:
        input_content = f.read()
    features = [videointelligence.Feature.LOGO_RECOGNITION]

    operation = client.annotate_video(
        request={"features": features, "input_content": input_content}
    )

    print("Waiting for operation to complete...")
    response = operation.result()

    # Get the first response, since we sent only one video.
    annotation_result = response.annotation_results[0]

    # Annotations for list of logos detected, tracked and recognized in video.
    for logo_recognition_annotation in annotation_result.logo_recognition_annotations:
        entity = logo_recognition_annotation.entity

        # Opaque entity ID. Some IDs may be available in [Google Knowledge Graph
        # Search API](https://developers.google.com/knowledge-graph/).
        print("Entity Id : {}".format(entity.entity_id))

        print("Description : {}".format(entity.description))

        # All logo tracks where the recognized logo appears. Each track corresponds
        # to one logo instance appearing in consecutive frames.
        for track in logo_recognition_annotation.tracks:
            # Video segment of a track.
            print(
                "\n\tStart Time Offset : {}.{}".format(
                    track.segment.start_time_offset.seconds,
                    track.segment.start_time_offset.microseconds * 1000,
                )
            )
            print(
                "\tEnd Time Offset : {}.{}".format(
                    track.segment.end_time_offset.seconds,
                    track.segment.end_time_offset.microseconds * 1000,
                )
            )
            print("\tConfidence : {}".format(track.confidence))

            # The object with timestamp and attributes per frame in the track.
            for timestamped_object in track.timestamped_objects:
                # Normalized Bounding box in a frame, where the object is located.
                normalized_bounding_box = timestamped_object.normalized_bounding_box
                print("\n\t\tLeft : {}".format(normalized_bounding_box.left))
                print("\t\tTop : {}".format(normalized_bounding_box.top))
                print("\t\tRight : {}".format(normalized_bounding_box.right))
                print("\t\tBottom : {}".format(normalized_bounding_box.bottom))

                # Optional. The attributes of the object in the bounding box.
                for attribute in timestamped_object.attributes:
                    print("\n\t\t\tName : {}".format(attribute.name))
                    print("\t\t\tConfidence : {}".format(attribute.confidence))
                    print("\t\t\tValue : {}".format(attribute.value))

            # Optional. Attributes in the track level.
            for track_attribute in track.attributes:
                print("\n\t\tName : {}".format(track_attribute.name))
                print("\t\tConfidence : {}".format(track_attribute.confidence))
                print("\t\tValue : {}".format(track_attribute.value))

        # All video segments where the recognized logo appears. There might be
        # multiple instances of the same logo class appearing in one VideoSegment.
        for segment in logo_recognition_annotation.segments:
            print(
                "\n\tStart Time Offset : {}.{}".format(
                    segment.start_time_offset.seconds,
                    segment.start_time_offset.microseconds * 1000,
                )
            )
            print(
                "\tEnd Time Offset : {}.{}".format(
                    segment.end_time_offset.seconds,
                    segment.end_time_offset.microseconds * 1000,
                )
            )

Outras linguagens

C#: Siga as Instruções de configuração do C# na página de bibliotecas de cliente e acesse a Documentação de referência do Video Intelligence para .NET.

PHP Siga as Instruções de configuração para PHP na página de bibliotecas de cliente e acesse a Documentação de referência do Video Intelligence para PHP.

Ruby: Siga as Instruções de configuração do Ruby na página de bibliotecas de cliente e acesse a Documentação de referência do Video Intelligence para Ruby.