TensorFlow Object Detection(包名:org.tensorflow.detect)開發者是Amphan,TensorFlow Object Detection的最新版本0.2更新時間為2017年10月09日。Objects Detection Machine Learning TensorFlow Demo的分類是程式庫與試用程式。您可以查看Objects Detection Machine Learning TensorFlow Demo的開發者下的所有應用並找到Objects Detection Machine Learning TensorFlow Demo在安卓上的60個相似應用。目前這個應用免費。該應用可以從APKFab或Google Play下載到Android 5.0+。APKFab.com的所有APK/XAPK文檔都是原始文檔並且100%安全下載的資源。
Objects Detection Machine Learning TensorFlow Demo.
Uses the Google TensorFlow Machine Learning Library Inception model to detect object with camera frames in real-time, displaying the label and overlay on the camera image.
Detect 1001 objects in this model
more info
http://androidcontrol.blogspot.com
What is TensorFlow?
TensorFlow is open source machine learning library from Google. Computation code is written in C++, but programmers can write their TensorFlow software in either C++ or Python and implemented for CPUs ,GPUs or both.
In November 2015, Google announced and open sourced TensorFlow, its latest and greatest machine learning library. This is a big deal for three reasons:
1.Machine Learning expertise: Google is a dominant force in machine learning. Its prominence in search owes a lot to the strides it achieved in machine learning.
2.Scalable : the announcement noted that TensorFlow was initially designed for internal use and that it’s already in production for some live product features.
3.Ability to run on Mobile.
This last reason is the operating reason for this post since we’ll be focusing on Android. If you examine the tensorflow repo on GitHub, you’ll find a little tensorflow/examples/android directory. I’ll try to shed some light on the Android TensorFlow example and some of the things going on under the hood.
original code
https://github.com/tensorflow/tensorflow/tree/master/tensorflow/examples/android
My Website
http://softpowergroup.net/
My Blog
https://androidcontrol.blogspot.com
email :
[email protected] [email protected]Tel .6681-6452400 ( Thailand )
Google+ https://plus.google.com/+SoftpowergroupNetThailand/
Facebook : https://www.facebook.com/softpowergroup/