Fast and robust framework for view-invariant gait recognition
Version 2 2024-06-05, 03:27Version 2 2024-06-05, 03:27
Version 1 2019-04-10, 10:54Version 1 2019-04-10, 10:54
conference contribution
posted on 2024-06-05, 03:27 authored by N Jia, Chang-Tsun LiChang-Tsun Li, V Sanchez, AWC Liew© 2017 IEEE. View-invariant gait recognition is one of the major challenges in identifying people through their gait. Many researchers have evaluated view angle transformation techniques, discriminant analysis and manifold learning approaches for cross-view recognition, and their proposals are usually based on a common factor, i.e., to establish a cross-view mapping between gallery and probe templates. However, their effectiveness is restricted to small view angle variances. A promising approach to perform view-invariant gait recognition is through multi-view feature learning. In this paper, we propose the view-invariant feature selector (ViFS) and integrate it in a framework for view-invariant gait recognition. ViFS select features from multi-view gait templates and reconstructs gallery templates that accurately match the data for a specific view angle. ViFS is thus able to reconstruct gallery templates from arbitrary view angles, and thus help to transfer the cross-view problem to identical-view gait recognition. We also apply linear subspace learning methods as feature enhancers for ViFS, which substantially reduce the computational cost and improve the recognition speed. We test the proposed framework on the CASIA Dataset B. The average recognition accuracy of the proposed framework for 11 different views exceed 98%.
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Pagination
1-6Location
Coventry, EnglandStart date
2017-04-04End date
2017-04-05ISBN-13
9781509057917Language
engPublication classification
E1.1 Full written paper - refereedTitle of proceedings
IWBF 2017 : Proceedings of the 5th International Workshop on Biometrics and ForensicsEvent
Biometrics and Forensics. Workshop (2017 : 5th : Coventry, England)Publisher
IEEEPlace of publication
Piscataway, N.J.Usage metrics
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