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GaitMixer: Skeleton-based Gait Representation Learning via Wide-spectrum Multi-axial Mixer
Pinyoanuntapong Ekkasit ; Ali Ayman ; Wang Pu ; Lee Minwoo ; Chen Chen

Abstract
Most existing gait recognition methods are appearance-based, which rely onthe silhouettes extracted from the video data of human walking activities. Theless-investigated skeleton-based gait recognition methods directly learn thegait dynamics from 2D/3D human skeleton sequences, which are theoretically morerobust solutions in the presence of appearance changes caused by clothes,hairstyles, and carrying objects. However, the performance of skeleton-basedsolutions is still largely behind the appearance-based ones. This paper aims toclose such performance gap by proposing a novel network model, GaitMixer, tolearn more discriminative gait representation from skeleton sequence data. Inparticular, GaitMixer follows a heterogeneous multi-axial mixer architecture,which exploits the spatial self-attention mixer followed by the temporallarge-kernel convolution mixer to learn rich multi-frequency signals in thegait feature maps. Experiments on the widely used gait database, CASIA-B,demonstrate that GaitMixer outperforms the previous SOTA skeleton-based methodsby a large margin while achieving a competitive performance compared with therepresentative appearance-based solutions. Code will be available athttps://github.com/exitudio/gaitmixer
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| multiview-gait-recognition-on-casia-b | GaitFormer | Accuracy (Cross-View, Avg): 83.4 BG#1-2: 81.4 CL#1-2: 77.2 NM#5-6 : 91.5 |
| multiview-gait-recognition-on-casia-b | GaitMixer | Accuracy (Cross-View, Avg): 88.3 BG#1-2: 85.6 CL#1-2: 84.5 NM#5-6 : 94.9 |
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