Detect objects in images with Amazon Rekognition using an AWS SDK - AWS SDK Code Examples

There are more AWS SDK examples available in the AWS Doc SDK Examples GitHub repo.

Detect objects in images with Amazon Rekognition using an AWS SDK

The following code examples show how to build an app that uses Amazon Rekognition to detect objects by category in images.

.NET
AWS SDK for .NET

Shows how to use Amazon Rekognition .NET API to create an app that uses Amazon Rekognition to identify objects by category in images located in an Amazon Simple Storage Service (Amazon S3) bucket. The app sends the admin an email notification with the results using Amazon Simple Email Service (Amazon SES).

For complete source code and instructions on how to set up and run, see the full example on GitHub.

Services used in this example
  • Amazon Rekognition

  • Amazon S3

  • Amazon SES

Java
SDK for Java 2.x

Shows how to use Amazon Rekognition Java API to create an app that uses Amazon Rekognition to identify objects by category in images located in an Amazon Simple Storage Service (Amazon S3) bucket. The app sends the admin an email notification with the results using Amazon Simple Email Service (Amazon SES).

For complete source code and instructions on how to set up and run, see the full example on GitHub.

Services used in this example
  • Amazon Rekognition

  • Amazon S3

  • Amazon SES

JavaScript
SDK for JavaScript (v3)

Shows how to use Amazon Rekognition with the AWS SDK for JavaScript to create an app that uses Amazon Rekognition to identify objects by category in images located in an Amazon Simple Storage Service (Amazon S3) bucket. The app sends the admin an email notification with the results using Amazon Simple Email Service (Amazon SES).

Learn how to:

  • Create an unauthenticated user using Amazon Cognito.

  • Analyze images for objects using Amazon Rekognition.

  • Verify an email address for Amazon SES.

  • Send an email notification using Amazon SES.

For complete source code and instructions on how to set up and run, see the full example on GitHub.

Services used in this example
  • Amazon Rekognition

  • Amazon S3

  • Amazon SES

Kotlin
SDK for Kotlin

Shows how to use Amazon Rekognition Kotlin API to create an app that uses Amazon Rekognition to identify objects by category in images located in an Amazon Simple Storage Service (Amazon S3) bucket. The app sends the admin an email notification with the results using Amazon Simple Email Service (Amazon SES).

For complete source code and instructions on how to set up and run, see the full example on GitHub.

Services used in this example
  • Amazon Rekognition

  • Amazon S3

  • Amazon SES

Python
SDK for Python (Boto3)

Shows you how to use the AWS SDK for Python (Boto3) to create a web application that lets you do the following:

  • Upload photos to an Amazon Simple Storage Service (Amazon S3) bucket.

  • Use Amazon Rekognition to analyze and label the photos.

  • Use Amazon Simple Email Service (Amazon SES) to send email reports of image analysis.

This example contains two main components: a webpage written in JavaScript that is built with React, and a REST service written in Python that is built with Flask-RESTful.

You can use the React webpage to:

  • Display a list of images that are stored in your S3 bucket.

  • Upload images from your computer to your S3 bucket.

  • Display images and labels that identify items that are detected in the image.

  • Get a report of all images in your S3 bucket and send an email of the report.

The webpage calls the REST service. The service sends requests to AWS to perform the following actions:

  • Get and filter the list of images in your S3 bucket.

  • Upload photos to your S3 bucket.

  • Use Amazon Rekognition to analyze individual photos and get a list of labels that identify items that are detected in the photo.

  • Analyze all photos in your S3 bucket and use Amazon SES to email a report.

For complete source code and instructions on how to set up and run, see the full example on GitHub.

Services used in this example
  • Amazon Rekognition

  • Amazon S3

  • Amazon SES