Gait Sequence
Gait sequence analysis focuses on understanding and characterizing the temporal and spatial patterns of human locomotion, aiming to extract meaningful information for various applications. Current research emphasizes developing robust methods for gait cycle segmentation and feature extraction using diverse data sources (e.g., inertial measurement units, video, 3D motion capture), often employing deep learning architectures like LSTMs, convolutional neural networks, and graph convolutional networks, along with techniques like optimal transport and Koopman operator theory. These advancements have significant implications for clinical gait assessment (e.g., diagnosing neurological disorders), human identification (e.g., security and surveillance), and robotics (e.g., improving legged robot locomotion).
Papers
GaitEdge: Beyond Plain End-to-end Gait Recognition for Better Practicality
Junhao Liang, Chao Fan, Saihui Hou, Chuanfu Shen, Yongzhen Huang, Shiqi Yu
GaitStrip: Gait Recognition via Effective Strip-based Feature Representations and Multi-Level Framework
Ming Wang, Beibei Lin, Xianda Guo, Lincheng Li, Zheng Zhu, Jiande Sun, Shunli Zhang, Xin Yu