Learning Geometric Invariance for Gait Recognition
Zengbin Wang, Junjie Li, Saihui Hou, Xu Liu, Chunshui Cao, Yongzhen Huang, Muyi Sun, Siye Wang, Man Zhang

TL;DR
This paper introduces a novel gait recognition method that explicitly models geometric transformations to achieve invariance, improving recognition accuracy across different gait conditions.
Contribution
It proposes the RRS-Gait framework that explicitly learns geometric invariance through transformations like reflect, rotate, and scale, a new perspective in gait recognition.
Findings
Outperforms existing methods on four gait datasets.
Effectively handles cross-view and cross-clothing conditions.
Demonstrates the importance of explicit geometric invariance learning.
Abstract
The goal of gait recognition is to extract identity-invariant features of an individual under various gait conditions, e.g., cross-view and cross-clothing. Most gait models strive to implicitly learn the common traits across different gait conditions in a data-driven manner to pull different gait conditions closer for recognition. However, relatively few studies have explicitly explored the inherent relations between different gait conditions. For this purpose, we attempt to establish connections among different gait conditions and propose a new perspective to achieve gait recognition: variations in different gait conditions can be approximately viewed as a combination of geometric transformations. In this case, all we need is to determine the types of geometric transformations and achieve geometric invariance, then identity invariance naturally follows. As an initial attempt, we…
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Taxonomy
TopicsGait Recognition and Analysis · Balance, Gait, and Falls Prevention · Prosthetics and Rehabilitation Robotics
