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Robust gait recognition by learning and exploiting sub-gait characteristics

Venkat, I., De Wilde, Philippe (2011) Robust gait recognition by learning and exploiting sub-gait characteristics. International Journal of Computer Vision, 91 (1). pp. 7-23. ISSN 0920-5691. (doi:10.1007/s11263-010-0362-6) (The full text of this publication is not currently available from this repository. You may be able to access a copy if URLs are provided) (KAR id:93345)

The full text of this publication is not currently available from this repository. You may be able to access a copy if URLs are provided.
Official URL:
https://doi.org/10.1007/s11263-010-0362-6

Abstract

Gait recognition algorithms often perform poorly because of low resolution video sequences, subjective human motion and challenging outdoor scenarios. Despite these challenges, gait recognition research is gaining momentum due to increasing demand and more possibilities for deployment by the surveillance industry. Therefore every research contribution which significantly improves this new biometric is a milestone. We propose a probabilistic sub-gait interpretation model to recognize gaits. A sub-gait is defined by us as part of the silhouette of a moving body. Binary silhouettes of gait video sequences form the basic input of our approach. A novel modular training scheme has been introduced in this research to efficiently learn subtle sub-gait characteristics from the gait domain. For a given gait sequence, we get useful information from the sub-gaits by identifying and exploiting intrinsic relationships using Bayesian networks. Finally, by incorporating efficient inference strategies, robust decisions are made for recognizing gaits. Our results show that the proposed model tackles well the uncertainties imposed by typical covariate factors and shows significant recognition performance.

Item Type: Article
DOI/Identification number: 10.1007/s11263-010-0362-6
Uncontrolled keywords: Bayesian Network, Biometrics, Gait recognition, Human motion analysis, Machine learning
Subjects: Q Science
Divisions: Divisions > Division of Computing, Engineering and Mathematical Sciences > School of Computing
Depositing User: Philippe De Wilde
Date Deposited: 20 Dec 2022 14:53 UTC
Last Modified: 09 Jan 2023 10:08 UTC
Resource URI: https://kar.kent.ac.uk/id/eprint/93345 (The current URI for this page, for reference purposes)

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