Functionality-Oriented Convolutional Filter Pruning

ICLR 2019 Zhuwei QinFuxun YuChenchen LiuXiang Chen

The sophisticated structure of Convolutional Neural Network (CNN) allows for outstanding performance, but at the cost of intensive computation. As significant redundancies inevitably present in such a structure, many works have been proposed to prune the convolutional filters for computation cost reduction... (read more)

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