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Patch Slimming for Efficient Vision Transformers

Authors :
Tang, Yehui
Han, Kai
Wang, Yunhe
Xu, Chang
Guo, Jianyuan
Xu, Chao
Tao, Dacheng
Publication Year :
2021

Abstract

This paper studies the efficiency problem for visual transformers by excavating redundant calculation in given networks. The recent transformer architecture has demonstrated its effectiveness for achieving excellent performance on a series of computer vision tasks. However, similar to that of convolutional neural networks, the huge computational cost of vision transformers is still a severe issue. Considering that the attention mechanism aggregates different patches layer-by-layer, we present a novel patch slimming approach that discards useless patches in a top-down paradigm. We first identify the effective patches in the last layer and then use them to guide the patch selection process of previous layers. For each layer, the impact of a patch on the final output feature is approximated and patches with less impact will be removed. Experimental results on benchmark datasets demonstrate that the proposed method can significantly reduce the computational costs of vision transformers without affecting their performances. For example, over 45% FLOPs of the ViT-Ti model can be reduced with only 0.2% top-1 accuracy drop on the ImageNet dataset.<br />Comment: This paper is accepted by CVPR 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.02852
Document Type :
Working Paper