IEICE Transactions on Information and Systems
Online ISSN : 1745-1361
Print ISSN : 0916-8532
Regular Section
Individuality-Preserving Silhouette Extraction for Gait Recognition and Its Speedup
Masakazu IWAMURAShunsuke MORIKoichiro NAKAMURATakuya TANOUEYuzuko UTSUMIYasushi MAKIHARADaigo MURAMATSUKoichi KISEYasushi YAGI
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2021 Volume E104.D Issue 7 Pages 992-1001

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Abstract

Most gait recognition approaches rely on silhouette-based representations due to high recognition accuracy and computational efficiency. A fundamental problem for those approaches is how to extract individuality-preserved silhouettes from real scenes accurately. Foreground colors may be similar to background colors, and the background is cluttered. Therefore, we propose a method of individuality-preserving silhouette extraction for gait recognition using standard gait models (SGMs) composed of clean silhouette sequences of various training subjects as shape priors. The SGMs are smoothly introduced into a well-established graph-cut segmentation framework. Experiments showed that the proposed method achieved better silhouette extraction accuracy by more than 2.3% than representative methods and better identification rate of gait recognition (improved by more than 11.0% at rank 20). Besides, to reduce the computation cost, we introduced approximation in the calculation of dynamic programming. As a result, without reducing the segmentation accuracy, we reduced 85.0% of the computational cost.

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© 2021 The Institute of Electronics, Information and Communication Engineers
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