On Denoising Walking Videos for Gait Recognition
Dongyang Jin, Chao Fan, Jingzhe Ma, Jingkai Zhou, Weihua Chen, Shiqi Yu

TL;DR
This paper introduces DenoisingGait, a novel gait denoising method using diffusion models and geometry-driven feature matching to improve gait recognition accuracy across diverse datasets.
Contribution
It proposes a new gait denoising approach combining diffusion models with a geometry-driven feature matching module for enhanced gait recognition.
Findings
Achieves state-of-the-art performance on multiple gait datasets.
Effectively filters out irrelevant cues like clothing and background.
Improves cross-domain gait recognition accuracy.
Abstract
To capture individual gait patterns, excluding identity-irrelevant cues in walking videos, such as clothing texture and color, remains a persistent challenge for vision-based gait recognition. Traditional silhouette- and pose-based methods, though theoretically effective at removing such distractions, often fall short of high accuracy due to their sparse and less informative inputs. Emerging end-to-end methods address this by directly denoising RGB videos using human priors. Building on this trend, we propose DenoisingGait, a novel gait denoising method. Inspired by the philosophy that "what I cannot create, I do not understand", we turn to generative diffusion models, uncovering how they partially filter out irrelevant factors for gait understanding. Additionally, we introduce a geometry-driven Feature Matching module, which, combined with background removal via human silhouettes,…
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Taxonomy
TopicsGait Recognition and Analysis · Diabetic Foot Ulcer Assessment and Management · Video Surveillance and Tracking Methods
MethodsDiffusion
