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TensorFlow Lite Object Detection Demo 2019 APK

Latest Version 1.0 for Windows
Updated 2019-05-30

App information

Version 1.0 (#1)

Updated 2019-05-30

APK Size 7.6 MB

Requires Android Android 2.3+ (Gingerbread)

Offered by CodeDunK

Category Free Libraries & Demo App

App id org.tensorflow.lite.codedunk.detection

Developer's notes A demo app to show TensorFlow Lite Object Detection and Tracking works.

Screenshot

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Latest updates

What's new in TensorFlow Lite Object Detection Demo 2019 1.0

Check out how object detection and Tracking works with TensorflowLite

Editor's review

Download the latest TensorFlow Lite Object Detection Demo 2019 application, version 1.0, compatible with Windows 10/11 (using emulators such as Bluestacks), Android devices. This free Libraries & Demo app is developed by CodeDunK and is easy to download and install.

Previous versions, including 1.0, are also available. If you need help or have any problems, please let us know.

Description

A sample app to show how TensorFlow Lite works real time on android phone.

Launch the app start viewing different objects in camera preview to see the bounding boxes and tracking in action.

TensorFlow Lite provides all the tools you need to convert and run TensorFlow models on mobile, embedded, and IoT devices.

TensorFlow Lite allows you to run TensorFlow models on a wide range of devices. A TensorFlow model is a data structure that contains the logic and knowledge of a machine learning network trained to solve a particular problem.

What is object detection?
Given an image or a video stream, an object detection model can identify which of a known set of objects might be present and provide information about their positions within the image.

An object detection model is trained to detect the presence and location of multiple classes of objects. For example, a model might be trained with images that contain various pieces of fruit, along with a label that specifies the class of fruit they represent (e.g. an apple, a banana, or a strawberry), and data specifying where each object appears in the image.

When we subsequently provide an image to the model, it will output a list of the objects it detects, the location of a bounding box that contains each object, and a score that indicates the confidence that detection was correct.

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Previous versions

TensorFlow Lite Object Detection Demo 2019 1.0 APK for Windows (#1, 7.6 MB)