Language-Guided and Motion-Aware Gait Representation for Generalizable Recognition
Zhengxian Wu, Chuanrui Zhang, Shenao Jiang, Hangrui Xu, Zirui Liao, Luyuan Zhang, Huaqiu Li, Peng Jiao, Haoqian Wang

TL;DR
This paper introduces LMGait, a novel gait recognition framework that incorporates natural language descriptions and motion-aware modules to improve recognition accuracy and robustness across varying conditions.
Contribution
LMGait is the first to integrate natural language cues as semantic priors into gait recognition, enhancing motion feature extraction and cross-modal alignment.
Findings
Achieved state-of-the-art accuracy on multiple datasets.
Effectively captures dynamic motion regions in gait sequences.
Improves robustness to intra-class variation and environmental changes.
Abstract
Gait recognition is emerging as a promising technology and an innovative field within computer vision, with a wide range of applications in remote human identification. However, existing methods typically rely on complex architectures to directly extract features from images and apply pooling operations to obtain sequence-level representations. Such designs often lead to overfitting on static noise (e.g., clothing), while failing to effectively capture dynamic motion regions, such as the arms and legs. This bottleneck is particularly challenging in the presence of intra-class variation, where gait features of the same individual under different environmental conditions are significantly distant in the feature space. To address the above challenges, we present a Languageguided and Motion-aware gait recognition framework, named LMGait. To the best of our knowledge, LMGait is the first…
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Taxonomy
TopicsGait Recognition and Analysis · Human Pose and Action Recognition · Balance, Gait, and Falls Prevention
