BriefGPT.xyz
Feb, 2018
重新思考卷积层通道剪枝中的小范数低信息量假设
Rethinking the Smaller-Norm-Less-Informative Assumption in Channel Pruning of Convolution Layers
HTML
PDF
Jianbo Ye, Xin Lu, Zhe Lin, James Z. Wang
TL;DR
本文提出一种基于通道修剪的卷积神经网络加速算法,该算法通过端到端随机训练和修剪常量通道的方法得到压缩模型,并在多个图像识别任务上验证了其竞争性能。
Abstract
model pruning
has become a useful technique that improves the
computational efficiency
of
deep learning
, making it possible to deploy solu
→