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GaitRef: Gait Recognition with Refined Sequential Skeletons

About

Identifying humans with their walking sequences, known as gait recognition, is a useful biometric understanding task as it can be observed from a long distance and does not require cooperation from the subject. Two common modalities used for representing the walking sequence of a person are silhouettes and joint skeletons. Silhouette sequences, which record the boundary of the walking person in each frame, may suffer from the variant appearances from carried-on objects and clothes of the person. Framewise joint detections are noisy and introduce some jitters that are not consistent with sequential detections. In this paper, we combine the silhouettes and skeletons and refine the framewise joint predictions for gait recognition. With temporal information from the silhouette sequences, we show that the refined skeletons can improve gait recognition performance without extra annotations. We compare our methods on four public datasets, CASIA-B, OUMVLP, Gait3D and GREW, and show state-of-the-art performance.

Haidong Zhu, Wanrong Zheng, Zhaoheng Zheng, Ram Nevatia• 2023

Related benchmarks

TaskDatasetResultRank
Gait RecognitionCASIA-B NM (Normal) (NM#5-6 probe)
Acc (54°)98
72
Gait RecognitionCASIA-B CL (Coat) #1-2 (probe)
Mean Accuracy88
64
Gait RecognitionGait3D
R-1 Acc49
49
Gait RecognitionCASIA-B BG (Bag) (BG#1-2 probe)
Mean Accuracy95.9
48
Gait RecognitionGait3D (test)
Rank-1 Accuracy49
20
Gait RecognitionGREW (test)
Rank-1 Accuracy53
18
Gait RecognitionGREW
Rank-1 Accuracy53
18
Gait RecognitionOUMVLP (test)
Mean Rank-1 Accuracy90.2
16
Gait RecognitionCASIA-B Bag Carrying (#1-2)
Rank-1 Accuracy (0°)94.4
15
Gait RecognitionOUMVLP excluding identical-view cases
Accuracy (0°)85.7
9
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