Title :
A New View-Invariant Feature for Cross-View Gait Recognition
Author :
Kusakunniran, Worapan ; Qiang Wu ; Jian Zhang ; Yi Ma ; Hongdong Li
Author_Institution :
Sch. of Comput. Sci. & Eng., Univ. of New South Wales, Sydney, NSW, Australia
Abstract :
Human gait is an important biometric feature which is able to identify a person remotely. However, change of view causes significant difficulties for recognizing gaits. This paper proposes a new framework to construct a new view-invariant feature for cross-view gait recognition. Our view-normalization process is performed in the input layer (i.e., on gait silhouettes) to normalize gaits from arbitrary views. That is, each sequence of gait silhouettes recorded from a certain view is transformed onto the common canonical view by using corresponding domain transformation obtained through invariant low-rank textures (TILTs). Then, an improved scheme of procrustes shape analysis (PSA) is proposed and applied on a sequence of the normalized gait silhouettes to extract a novel view-invariant gait feature based on procrustes mean shape (PMS) and consecutively measure a gait similarity based on procrustes distance (PD). Comprehensive experiments were carried out on widely adopted gait databases. It has been shown that the performance of the proposed method is promising when compared with other existing methods in the literature.
Keywords :
biometrics (access control); feature extraction; gait analysis; image texture; object recognition; visual databases; PD; PMS; PSA; TILT; biometric feature; canonical view; cross-view gait recognition; domain transformation; gait databases; gait normalization; gait similarity; human gait; input layer; invariant low-rank textures; normalized gait silhouette sequence; procrustes distance; procrustes mean shape; procrustes shape analysis; view-invariant feature; view-invariant gait feature extraction; view-normalization process; Australia; Databases; Feature extraction; Gait recognition; Legged locomotion; Optimization; Shape; Gait recognition; gross sparse error; human identification; low-rank texture; procrustes shape analysis; view invariant;
Journal_Title :
Information Forensics and Security, IEEE Transactions on
DOI :
10.1109/TIFS.2013.2252342