PointGait: Boosting End-to-End 3D Gait Recognition with Point Clouds via Spatiotemporal Modeling.

Rui Wang,Chuanfu Shen,Chao Fan, George Q. Huang,Shiqi Yu

International Joint Conference on Biometrics(2023)

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摘要
LiDAR is a new type of sensor used for gait recognition. Previous LiDAR-based state-of-the-art methods mostly exploit gait features from the depth maps generated by projecting point clouds in a 3D-to-2D manner, rather than directly using the raw 3D point data. However, these projection-based methods require an additional preprocessing step, which obstructs the universality of the method among different types of LiDARs. On the other hand, while existing point-based methods have achieved promising results in 3D object recognition, they have underperformed in 3D gait recognition, indicating the presence of a domain gap between coarse-grained 3D object classification and fine-grained 3D pedestrians recognition. By analyzing the success achieved by camera-based methods, we perceive that point-based gait recognition fails mainly because of neglecting to capture local representation. To address this issue, we propose an end-to-end 3D gait recognition framework named PointGait, which can directly capture informative gait features from point cloud data. Specifically, PointGait is a multi-stream model consisting of a Global and Local Gait Feature Extractor to extract holistic and fine-grained spatial features. Besides, a Personalized Motion Extractor is introduced to capture inter-frame motion features. Our experimental results on a LiDAR gait dataset, SUSTech1K, outperform all popular point-based methods, demonstrating the effectiveness and potential of our approach. In conclusion, the proposed PointGait promotes the development of point-based gait recognition by highlighting the importance of incorporating fine-grained spatiotemporal information.
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关键词
Point Cloud,Gait Recognition,Local Features,Pedestrian,Global Features,Object Recognition,Object Classification,Point Cloud Data,Fine-grained Information,Gait Characteristics,Fine-grained Features,Point-based Methods,Convolutional Neural Network,Local Information,Temporal Dimension,2D Images,Spatial Model,Temporal Information,Recognition Accuracy,Temporal Model,Triplet Loss,3D Point Cloud Data,Gait Cycle,Recognition Performance,Ablation Experiments,3D Point Cloud,Model-based Methods,Depth Images,LiDAR Sensor
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