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GaitSnippet: Gait Recognition Beyond Unordered Sets and Ordered Sequences

GaitSnippet: Gait Recognition Beyond Unordered Sets and Ordered Sequences

来源:Arxiv_logoArxiv
英文摘要

Recent advancements in gait recognition have significantly enhanced performance by treating silhouettes as either an unordered set or an ordered sequence. However, both set-based and sequence-based approaches exhibit notable limitations. Specifically, set-based methods tend to overlook short-range temporal context for individual frames, while sequence-based methods struggle to capture long-range temporal dependencies effectively. To address these challenges, we draw inspiration from human identification and propose a new perspective that conceptualizes human gait as a composition of individualized actions. Each action is represented by a series of frames, randomly selected from a continuous segment of the sequence, which we term a snippet. Fundamentally, the collection of snippets for a given sequence enables the incorporation of multi-scale temporal context, facilitating more comprehensive gait feature learning. Moreover, we introduce a non-trivial solution for snippet-based gait recognition, focusing on Snippet Sampling and Snippet Modeling as key components. Extensive experiments on four widely-used gait datasets validate the effectiveness of our proposed approach and, more importantly, highlight the potential of gait snippets. For instance, our method achieves the rank-1 accuracy of 77.5% on Gait3D and 81.7% on GREW using a 2D convolution-based backbone.

Saihui Hou、Chenye Wang、Wenpeng Lang、Zhengxiang Lan、Yongzhen Huang

计算技术、计算机技术

Saihui Hou,Chenye Wang,Wenpeng Lang,Zhengxiang Lan,Yongzhen Huang.GaitSnippet: Gait Recognition Beyond Unordered Sets and Ordered Sequences[EB/OL].(2025-08-11)[2025-08-24].https://arxiv.org/abs/2508.07782.点此复制

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