Title
Gait recognition using spectral features of foot motion
Abstract
Gait as a motion-based biometric has the merit of being non-contact and unobtrusive. In this paper, we proposed a gait recognition approach using spectral features of horizontal and vertical movement of ankles in a normal walk. Gait recognition experiments using the spectral features in term of the magnitude, phase and phase-weighted magnitude show that both magnitude and phase spectra are effective gait signatures, but magnitude spectra are slightly superior. We also proposed the use of geometrical mean based spectral features for gait recognition. Experimental results with 9 subjects show encouraging results in the same-day test, while the effect of time covariate is confirmed in the cross-month test.
Year
DOI
Venue
2005
10.1007/11527923_80
AVBPA
Keywords
Field
DocType
same-day test,gait recognition approach,foot motion,effective gait signature,phase-weighted magnitude show,spectral feature,phase spectrum,cross-month test,magnitude spectrum,gait recognition experiment,gait recognition,geometric mean
Phase spectrum,Magnitude (mathematics),Computer vision,Covariate,Gait,Computer science,Image processing,Effect of gait parameters on energetic cost,Artificial intelligence,Biometrics
Conference
Volume
ISSN
ISBN
3546
0302-9743
3-540-27887-7
Citations 
PageRank 
References 
2
0.43
10
Authors
7