CVSep 20, 2021

Learning Versatile Convolution Filters for Efficient Visual Recognition

arXiv:2109.09310v19 citations
Originality Incremental advance
AI Analysis

This work addresses the need for efficient deep learning on cost-effective hardware, offering an incremental improvement over existing filter-slimming methods.

The paper tackles the problem of constructing efficient convolutional neural networks for visual recognition by introducing versatile filters that enhance filter capability without extra storage, achieving comparable accuracy with reduced memory and computation costs.

This paper introduces versatile filters to construct efficient convolutional neural networks that are widely used in various visual recognition tasks. 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, \eg,~investigating small, sparse or quantized filters. In contrast, we treat filters from an additive perspective. A series of secondary filters can be derived from a primary filter with the help of binary masks. These secondary filters all inherit in the primary filter without occupying more storage, but once been unfolded in computation they could significantly enhance the capability of the filter by integrating information extracted from different receptive fields. Besides spatial versatile filters, we additionally investigate versatile filters from the channel perspective. Binary masks can be further customized for different primary filters under orthogonal constraints. We conduct theoretical analysis on network complexity and an efficient convolution scheme is introduced. Experimental results on benchmark datasets and neural networks demonstrate that our versatile filters are able to achieve comparable accuracy as that of original filters, but require less memory and computation cost.

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