Human Motion
Human motion research aims to understand, model, and generate human movement, focusing on both the mechanics of movement and its contextual meaning. Current research heavily utilizes deep learning, employing architectures like transformers, graph convolutional networks, and diffusion models to analyze motion capture data, videos, and textual descriptions, often integrating multimodal information for improved accuracy and realism. This field is crucial for advancements in areas such as healthcare (e.g., gait analysis for disease diagnosis), robotics (e.g., creating more natural and human-like robot movements), and animation (e.g., generating realistic human motion for films and video games). The development of large-scale, diverse datasets is a key driver of progress, enabling the training of more robust and generalizable models.
Papers
HybridCap: Inertia-aid Monocular Capture of Challenging Human Motions
Han Liang, Yannan He, Chengfeng Zhao, Mutian Li, Jingya Wang, Jingyi Yu, Lan Xu
HSC4D: Human-centered 4D Scene Capture in Large-scale Indoor-outdoor Space Using Wearable IMUs and LiDAR
Yudi Dai, Yitai Lin, Chenglu Wen, Siqi Shen, Lan Xu, Jingyi Yu, Yuexin Ma, Cheng Wang