MicroNet: Improving Image Recognition with Extremely Low FLOPs

2021 IEEE/CVF International Conference on Computer Vision (ICCV)(2021)

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摘要
This paper aims at addressing the problem of substantial performance degradation at extremely low computational cost (e.g. 5M FLOPs on ImageNet classification). We found that two factors, sparse connectivity and dynamic activation function, are effective to improve the accuracy. The former avoids the significant reduction of network width, while the latter mitigates the detriment of reduction in n...
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关键词
Image recognition,Convolution,Pose estimation,Object detection,Performance gain,Solids,Computational efficiency
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