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PolyNet: A Pursuit of Structural Diversity in Very Deep Networks

By Xingcheng Zhang, Zhizhong Li, Chen Change Loy, Dahua Lin

Multimedia Laboratory, The Chinese University of Hong Kong

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BibTeX

@article{zhang2016polynet,
  title={Polynet: A pursuit of structural diversity in very deep networks},
  author={Zhang, Xingcheng and Li, Zhizhong and Loy, Chen Change and Lin, Dahua},
  journal={arXiv preprint arXiv:1611.05725},
  year={2016}
}

The Very Deep PolyNet

PolyNet

Results

<img src="https://rawgit.com/CUHK-MMLAB/polynet/master/compare.svg" width="60%">
modeltraining speed* (#imgs/second)single-crop val top-1single-crop val top-5single-crop test top-5multi-crop val top-1multi-crop val top-5
ResNet-152-22.166.16-19.384.49
ResNet-152^279 ( 8 GPUs)20.935.545.5018.503.97
ResNet-269^245 (16 GPUs)19.784.894.8217.543.55
ResNet-500^248 (32 GPUs)19.664.784.7017.593.63
Inception-v4-20.05.0-1 7.73.8
Inception-ResNet-v2-19.94.9-17.83.7
Inception-ResNet-v2314 ( 8 GPUs)20.055.055.1118.413.98
Very Deep Inception-ResNet278 (32 GPUs)19.104.484.4617.393.56
Very Deep PolyNet290 (32 GPUs)18.714.254.3317.363.45

^ The ResNet models are trained by Tong Xiao;

* Training speed is measured on Parrots using NVIDIA TITAN X Graphics Cards.