GaitSnippet: Gait Recognition Beyond Unordered Sets and Ordered Sequences
GaitSnippet: Gait Recognition Beyond Unordered Sets and Ordered Sequences
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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