A Lightweight Network Based on Pyramid Residual Module for Human Pose Estimation


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Abstract

The human pose estimation is one of the most popular research fields. Its current accuracy is satisfactory in some cases, however, there exists a challenge for practical application due to the limited memory and computational efficiency in FPGAs and other hardware. We propose a lightweight module based on the pyramid residual module in this work. We change the convolution mode by using the depth-wise separable convolutions structure. Meanwhile, the channel split module and channel shuffle module are added to change the feature graph dimension. As a result, the parameters of the network are reduced effectively. We test the network on standard benchmarks MPII dataset, our method reduces about 50% of the training storage space while maintaining comparable accuracy. The complexity is simplified from 9 GFLOPs to 3 GFLOPs.

About the authors

Bingkun Gao

School of Electrical and Information Engineering, Northeast Petroleum University

Author for correspondence.
Email: bkgao@126.com
China, Daqing

Ke Ma

School of Electrical and Information Engineering, Northeast Petroleum University

Author for correspondence.
Email: make098@126.com
China, Daqing

Hongbo Bi

School of Electrical and Information Engineering, Northeast Petroleum University

Author for correspondence.
Email: bhbdq@126.com
China, Daqing

Ling Wang

School of Electrical and Information Engineering, Northeast Petroleum University

Author for correspondence.
Email: 1024573821@qq.com
China, Daqing

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