Publication | Closed Access
Gaitmixer: Skeleton-Based Gait Representation Learning Via Wide-Spectrum Multi-Axial Mixer
40
Citations
17
References
2023
Year
Unknown Venue
Gait AnalysisGait Recognition MethodsMachine LearningEngineeringHuman Pose Estimation3D Pose EstimationBiometricsWearable TechnologyKinesiologyImage AnalysisData ScienceMotion CapturePattern RecognitionKinematicsRobot LearningHealth SciencesMachine VisionMotion SynthesisComputer ScienceDeep LearningMedical Image ComputingComputer VisionGait DynamicsPathological GaitHuman MovementGait DatabaseActivity Recognition
Most existing gait recognition methods are appearance-based, which rely on the silhouettes extracted from the video data of human walking activities. The less-investigated skeleton-based gait recognition methods directly learn the gait dynamics from 2D/3D human skeleton sequences, which are theoretically more robust solutions in the presence of appearance changes caused by clothes, hairstyles, and carrying objects. However, the performance of skeleton-based solutions is still largely behind the appearance-based ones. This paper aims to close such performance gap by proposing a novel network model, GaitMixer, to learn more discriminative gait representation from skeleton sequence data. In particular, GaitMixer follows a heterogeneous multi-axial mixer architecture, which exploits the spatial self-attention mixer followed by the temporal large-kernel convolution mixer to learn rich multi-frequency signals in the gait feature maps. Experiments on the widely used gait database, CASIA-B, demonstrate that GaitMixer outperforms the previous SOTA skeleton-based methods by a large margin while achieving a competitive performance compared with the representative appearance-based solutions. Code will be available at https://github.com/exitudio/gaitmixer
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