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
YourSkatingCoach: A Figure Skating Video Benchmark for Fine-Grained Element Analysis
Wei-Yi Chen, Yu-An Su, Wei-Hsin Yeh, Lun-Wei Ku
RopeTP: Global Human Motion Recovery via Integrating Robust Pose Estimation with Diffusion Trajectory Prior
Mingjiang Liang, Yongkang Cheng, Hualin Liang, Shaoli Huang, Wei Liu
Language-Assisted Human Part Motion Learning for Skeleton-Based Temporal Action Segmentation
Bowen Chen, Haoyu Ji, Zhiyong Wang, Benjamin Filtjens, Chunzhuo Wang, Weihong Ren, Bart Vanrumste, Honghai Liu
Towards a GENEA Leaderboard -- an Extended, Living Benchmark for Evaluating and Advancing Conversational Motion Synthesis
Rajmund Nagy, Hendric Voss, Youngwoo Yoon, Taras Kucherenko, Teodor Nikolov, Thanh Hoang-Minh, Rachel McDonnell, Stefan Kopp, Michael Neff, Gustav Eje Henter
Massively Multi-Person 3D Human Motion Forecasting with Scene Context
Felix B Mueller, Julian Tanke, Juergen Gall
MoRAG -- Multi-Fusion Retrieval Augmented Generation for Human Motion
Kalakonda Sai Shashank, Shubh Maheshwari, Ravi Kiran Sarvadevabhatla
Generation of Complex 3D Human Motion by Temporal and Spatial Composition of Diffusion Models
Lorenzo Mandelli, Stefano Berretti