It Takes Two: Accurate Gait Recognition in the Wild via Cross-granularity Alignment
Jinkai Zheng, Xinchen Liu, Boyue Zhang, Chenggang Yan, Jiyong Zhang,, Wu Liu, Yongdong Zhang

TL;DR
This paper introduces XGait, a novel gait recognition method that aligns silhouette and human parsing features at multiple granularities, significantly improving accuracy and robustness in complex environments.
Contribution
The paper proposes a cross-granularity alignment framework with novel modules and a learnable division mechanism to effectively combine silhouette and parsing features for gait recognition.
Findings
Achieves 80.5% Rank-1 accuracy on Gait3D dataset.
Demonstrates robustness under occlusions and clothing variations.
Outperforms existing gait recognition methods.
Abstract
Existing studies for gait recognition primarily utilized sequences of either binary silhouette or human parsing to encode the shapes and dynamics of persons during walking. Silhouettes exhibit accurate segmentation quality and robustness to environmental variations, but their low information entropy may result in sub-optimal performance. In contrast, human parsing provides fine-grained part segmentation with higher information entropy, but the segmentation quality may deteriorate due to the complex environments. To discover the advantages of silhouette and parsing and overcome their limitations, this paper proposes a novel cross-granularity alignment gait recognition method, named XGait, to unleash the power of gait representations of different granularity. To achieve this goal, the XGait first contains two branches of backbone encoders to map the silhouette sequences and the parsing…
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Taxonomy
TopicsGait Recognition and Analysis · Diabetic Foot Ulcer Assessment and Management · Human Pose and Action Recognition
