MobileNets: Open-Source Models for Efficient On-Device Vision

來源:互聯網
上載者:User

標籤:mit   ogre   github   height   points   apt   start   publish   gem   

https://research.googleblog.com/2017/06/mobilenets-open-source-models-for.html

 

 Wednesday, June 14, 2017  Posted by Andrew G. Howard, Senior Software Engineer and Menglong Zhu, Software Engineer

(Cross-posted on the Google Open Source Blog)

Deep learning has fueled tremendous progress in the field of computer vision in recent years, with neural networks repeatedly pushing the frontier of visual recognition technology. While many of those technologies such as object, landmark, logo and text recognition are provided for internet-connected devices through the Cloud Vision API, we believe that the ever-increasing computational power of mobile devices can enable the delivery of these technologies into the hands of our users, anytime, anywhere, regardless of internet connection. However, visual recognition for on device and embedded applications poses many challenges — models must run quickly with high accuracy in a resource-constrained environment making use of limited computation, power and space.

Today we are pleased to announce the release of MobileNets, a family of mobile-first computer vision models for TensorFlow, designed to effectively maximize accuracy while being mindful of the restricted resources for an on-device or embedded application. MobileNets are small, low-latency, low-power models parameterized to meet the resource constraints of a variety of use cases. They can be built upon for classification, detection, embeddings and segmentation similar to how other popular large scale models, such as Inception, are used.
Example use cases include detection, fine-grain classification, attributes and geo-localization.
This release contains the model definition for MobileNets in TensorFlow using TF-Slim, as well as 16 pre-trained ImageNet classification checkpoints for use in mobile projects of all sizes. The models can be run efficiently on mobile devices with TensorFlow Mobile.

Model Checkpoint Million MACs Million Parameters Top-1 Accuracy Top-5 Accuracy
MobileNet_v1_1.0_224 569 4.24 70.7 89.5
MobileNet_v1_1.0_192 418 4.24 69.3 88.9
MobileNet_v1_1.0_160 291 4.24 67.2 87.5
MobileNet_v1_1.0_128 186 4.24 64.1 85.3
MobileNet_v1_0.75_224 317 2.59 68.4 88.2
MobileNet_v1_0.75_192 233 2.59 67.4 87.3
MobileNet_v1_0.75_160 162 2.59 65.2 86.1
MobileNet_v1_0.75_128 104 2.59 61.8 83.6
MobileNet_v1_0.50_224 150 1.34 64.0 85.4
MobileNet_v1_0.50_192 110 1.34 62.1 84.0
MobileNet_v1_0.50_160 77 1.34 59.9 82.5
MobileNet_v1_0.50_128 49 1.34 56.2 79.6
MobileNet_v1_0.25_224 41 0.47 50.6 75.0
MobileNet_v1_0.25_192 34 0.47 49.0 73.6
MobileNet_v1_0.25_160 21 0.47 46.0 70.7
MobileNet_v1_0.25_128 14 0.47 41.3 66.2
Choose the right MobileNet model to fit your latency and size budget. The size of the network in memory and on disk is proportional to the number of parameters. The latency and power usage of the network scales with the number of Multiply-Accumulates (MACs) which measures the number of fused Multiplication and Addition operations. Top-1 and Top-5 accuracies are measured on the ILSVRC dataset.
We are excited to share MobileNets with the open-source community. Information for getting started can be found at the TensorFlow-Slim Image Classification Library. To learn how to run models on-device please go to TensorFlow Mobile. You can read more about the technical details of MobileNets in our paper, MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications.

Acknowledgements
MobileNets were made possible with the hard work of many engineers and researchers throughout Google. Specifically we would like to thank:

Core Contributors: Andrew G. Howard, Menglong Zhu, Bo Chen, Dmitry Kalenichenko, Weijun Wang, Tobias Weyand, Marco Andreetto, Hartwig Adam

Special thanks to: Benoit Jacob, Skirmantas Kligys, George Papandreou, Liang-Chieh Chen, Derek Chow, Sergio Guadarrama, Jonathan Huang, Andre Hentz, Pete Warden 

MobileNets: Open-Source Models for Efficient On-Device Vision

相關文章

聯繫我們

該頁面正文內容均來源於網絡整理,並不代表阿里雲官方的觀點,該頁面所提到的產品和服務也與阿里云無關,如果該頁面內容對您造成了困擾,歡迎寫郵件給我們,收到郵件我們將在5個工作日內處理。

如果您發現本社區中有涉嫌抄襲的內容,歡迎發送郵件至: info-contact@alibabacloud.com 進行舉報並提供相關證據,工作人員會在 5 個工作天內聯絡您,一經查實,本站將立刻刪除涉嫌侵權內容。

A Free Trial That Lets You Build Big!

Start building with 50+ products and up to 12 months usage for Elastic Compute Service

  • Sales Support

    1 on 1 presale consultation

  • After-Sales Support

    24/7 Technical Support 6 Free Tickets per Quarter Faster Response

  • Alibaba Cloud offers highly flexible support services tailored to meet your exact needs.