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Journal article

Subband entropy-based features for clothing invariant human gait recognition

Abstract

This paper presents a wavelet-based feature extraction method for human gait recognition. The selection of features with most discriminative information is the key to improve recognition performance. The frequency domain representation of the gait image is obtained by using fast Fourier transforms. Next, a discrete wavelet transform is applied to the obtained spectrum. With single-level wavelet decomposition, four coefficients are generated. The sum of the entropy of these four wavelet coefficients is computed yielding the wavelet Entropy Image (wEnI) which is used here as the potential feature for human gait recognition. A template matching-based approach is used as the classification. The performance of the proposed wEnI feature is evaluated using whole-based and part-based methods. The experimental results show that the wEnI feature performs better compared to state-of-the-art gait features in common use.

Authors

Islam S; Islam R; Hossain A; Ferworn A; Molla KI

Journal

Advanced Robotics, Vol. 31, No. 10, pp. 519–530

Publisher

Taylor & Francis

Publication Date

May 19, 2017

DOI

10.1080/01691864.2017.1283249

ISSN

0169-1864

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