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TriGait: Aligning and Fusing Skeleton and Silhouette Gait Data via a Tri-Branch Network

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Gait recognition is a promising biometric technology for identification due to its non-invasiveness and long-distance. However, external variations such as clothing changes and viewpoint differences pose significant challenges to gait recognition. Silhouette-based methods preserve body shape but neglect internal structure information, while skeleton-based methods preserve structure information but omit appearance. To fully exploit the complementary nature of the two modalities, a novel triple branch gait recognition framework, TriGait, is proposed in this paper. It effectively integrates features from the skeleton and silhouette data in a hybrid fusion manner, including a two-stream network to extract static and motion features from appearance, a simple yet effective module named JSA-TC to capture dependencies between all joints, and a third branch for cross-modal learning by aligning and fusing low-level features of two modalities. Experimental results demonstrate the superiority and effectiveness of TriGait for gait recognition. The proposed method achieves a mean rank-1 accuracy of 96.0% over all conditions on CASIA-B dataset and 94.3% accuracy for CL, significantly outperforming all the state-of-the-art methods. The source code will be available at https://github.com/feng-xueling/TriGait/.

Yan Sun, Xueling Feng, Liyan Ma, Long Hu, Mark Nixon• 2023

Related benchmarks

TaskDatasetResultRank
Gait RecognitionCASIA-B NM (Normal) (NM#5-6 probe)
Acc (54°)98.3
72
Gait RecognitionCASIA-B CL (Coat) #1-2 (probe)
Mean Accuracy94.3
64
Gait RecognitionCASIA-B Bag Carrying (#1-2)
Rank-1 Accuracy (0°)91.8
15
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