GaitSet: Cross-view Gait Recognition through Utilizing Gait as a Deep Set
Hanqing Chao, Kun Wang, Yiwei He, Junping Zhang, Jianfeng Feng

TL;DR
GaitSet introduces a novel deep set approach for gait recognition, effectively handling variations in view, clothing, and carrying conditions, and demonstrating high accuracy and robustness across multiple datasets.
Contribution
It proposes a deep set framework for gait recognition that is permutation-invariant and flexible, improving robustness to different scenarios and limited frame data.
Findings
Achieves 96.1% rank-1 accuracy on CASIA-B under normal conditions.
Outperforms existing methods in complex scenarios like bag and coat wearing.
Maintains high accuracy with limited frames, e.g., 85.0% with only 7 frames.
Abstract
Gait is a unique biometric feature that can be recognized at a distance; thus, it has broad applications in crime prevention, forensic identification, and social security. To portray a gait, existing gait recognition methods utilize either a gait template which makes it difficult to preserve temporal information, or a gait sequence that maintains unnecessary sequential constraints and thus loses the flexibility of gait recognition. In this paper, we present a novel perspective that utilizes gait as a deep set, which means that a set of gait frames are integrated by a global-local fused deep network inspired by the way our left- and right-hemisphere processes information to learn information that can be used in identification. Based on this deep set perspective, our method is immune to frame permutations, and can naturally integrate frames from different videos that have been acquired…
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Taxonomy
TopicsGait Recognition and Analysis · Human Pose and Action Recognition · Video Surveillance and Tracking Methods
