Omni-Domain Feature Extraction Method for Gait Recognition

Author:

Wan Jiwei1,Zhao Huimin1,Li Rui12,Chen Rongjun1,Wei Tuanjie1

Affiliation:

1. School of Computer Science, Guangdong Polytechnic Normal University, Guangzhou 510665, China

2. School of Art and Design, Guangzhou College of Commerce, Guangzhou 511363, China

Abstract

As a biological feature with strong spatio-temporal correlation, the current difficulty of gait recognition lies in the interference of covariates (viewpoint, clothing, etc.) in feature extraction. In order to weaken the influence of extrinsic variable changes, we propose an interval frame sampling method to capture more information about joint dynamic changes, and an Omni-Domain Feature Extraction Network. The Omni-Domain Feature Extraction Network consists of three main modules: (1) Temporal-Sensitive Feature Extractor: injects key gait temporal information into shallow spatial features to improve spatio-temporal correlation. (2) Dynamic Motion Capture: extracts temporal features of different motion and assign weights adaptively. (3) Omni-Domain Feature Balance Module: balances fine-grained spatio-temporal features, highlight decisive spatio-temporal features. Extensive experiments were conducted on two commonly used public gait datasets, showing that our method has good performance and generalization ability. In CASIA-B, we achieved an average rank-1 accuracy of 94.2% under three walking conditions. In OU-MVLP, we achieved a rank-1 accuracy of 90.5%.

Funder

National Natural Science Foundation of China

Key Construction Discipline Scientific Research Capacity Improvement Project of Guangdong Province

Postgraduate Education Innovation Plan Project of Guangdong Province

Special Projects in Key Fields of Ordinary Universities of Guangdong Province

Guangzhou Science and Technology Plan Project

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

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5. Li, X., Makihara, Y., Xu, C., Yagi, Y., Yu, S., and Ren, M. (December, January 30). End-to-end model-based gait recognition. Proceedings of the Asian Conference on Computer Vision, Kyoto, Japan.

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