Learning Versatile Filters for Efficient Convolutional Neural Networks

Wang, Yunhe, Xu, Chang, XU, Chunjing, Xu, Chao, Tao, Dacheng

Neural Information Processing Systems 

This paper introduces versatile filters to construct efficient convolutional neural network. Considering the demands of efficient deep learning techniques running on cost-effective hardware, a number of methods have been developed to learn compact neural networks. Most of these works aim to slim down filters in different ways, e.g., investigating small, sparse or binarized filters. In contrast, we treat filters from an additive perspective. A series of secondary filters can be derived from a primary filter.