Quantized CNN for Mobile Devices
2017-10-28 本文已影响37人
信步闲庭v
Approach
Firstly, we introduce an efficient test-phase computation process with the network parameters quantized. Secondly, we demonstrate that better quantization can be learned by directly minimizing the estimation error of each layer’s response.
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Quantizing the Fully connected Layer
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- Quantization with Error Correction
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Experiment
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References:
Quantized Convolutional Neural Networks for Mobile Devices, chengjian, 2016, CVPR