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GaitMM: Multi-Granularity Motion Sequence Learning for Gait Recognition

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Gait recognition aims to identify individual-specific walking patterns by observing the different periodic movements of each body part. However, most existing methods treat each part equally and fail to account for the data redundancy caused by the different step frequencies and sampling rates of gait sequences. In this study, we propose a multi-granularity motion representation network (GaitMM) for gait sequence learning. In GaitMM, we design a combined full-body and fine-grained sequence learning module (FFSL) to explore part-independent spatio-temporal representations. Moreover, we utilize a frame-wise compression strategy, referred to as multi-scale motion aggregation (MSMA), to capture discriminative information in the gait sequence. Experiments on two public datasets, CASIA-B and OUMVLP, show that our approach reaches state-of-the-art performances.

Lei Wang, Bo Liu, Bincheng Wang, Fuqiang Yu• 2022

Related benchmarks

TaskDatasetResultRank
Gait RecognitionOUMVLP (test)
Mean Rank-1 Accuracy97
16
Gait RecognitionCASIA-B LT (74 subjects) NM#5-6 (probe)
Rank-1 Accuracy (0°)97.2
11
Gait RecognitionCASIA-B Walking with a Bag - BG #1-2 last 50 subjects LT protocol (test)
Rank-1 Acc (0°)94.9
6
Gait RecognitionCASIA-B Walking with a Coat - CL #1-2 LT protocol (test last 50 subjects)
Rank-1 Acc (0°)81.3
6
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