Human Pose
Human pose estimation, the task of determining the 3D configuration of a human body from images or sensor data, aims to accurately and efficiently capture human movement and posture. Current research focuses on improving robustness to challenges like occlusions, variations in viewpoint and lighting, and data scarcity, often employing diffusion models, transformers, and graph convolutional networks to achieve this. These advancements are driving progress in diverse applications, including human-computer interaction, animation, robotics, healthcare (e.g., gait analysis), and activity recognition, by enabling more accurate and nuanced understanding of human motion. The field is also actively addressing issues of data quality and bias in training datasets to enhance the reliability and generalizability of pose estimation models.
Papers
OpenCapBench: A Benchmark to Bridge Pose Estimation and Biomechanics
Yoni Gozlan, Antoine Falisse, Scott Uhlrich, Anthony Gatti, Michael Black, Akshay Chaudhari
Neural Pose Representation Learning for Generating and Transferring Non-Rigid Object Poses
Seungwoo Yoo, Juil Koo, Kyeongmin Yeo, Minhyuk Sung
Enhancing Inertial Hand based HAR through Joint Representation of Language, Pose and Synthetic IMUs
Vitor Fortes Rey, Lala Shakti Swarup Ray, Xia Qingxin, Kaishun Wu, Paul Lukowicz
UniAnimate: Taming Unified Video Diffusion Models for Consistent Human Image Animation
Xiang Wang, Shiwei Zhang, Changxin Gao, Jiayu Wang, Xiaoqiang Zhou, Yingya Zhang, Luxin Yan, Nong Sang
Scene Coordinate Reconstruction: Posing of Image Collections via Incremental Learning of a Relocalizer
Eric Brachmann, Jamie Wynn, Shuai Chen, Tommaso Cavallari, Áron Monszpart, Daniyar Turmukhambetov, Victor Adrian Prisacariu
CT-NeRF: Incremental Optimizing Neural Radiance Field and Poses with Complex Trajectory
Yunlong Ran, Yanxu Li, Qi Ye, Yuchi Huo, Zechun Bai, Jiahao Sun, Jiming Chen