3D Human Pose
3D human pose estimation aims to reconstruct a person's 3D skeletal structure from various input modalities, such as images, depth maps, or point clouds, with a primary objective of achieving accurate and robust pose estimation even under challenging conditions like occlusions or limited viewpoints. Current research heavily utilizes deep learning models, including transformers and diffusion models, often incorporating multi-view fusion techniques and leveraging synthetic data for training and evaluation. This field is crucial for numerous applications, including human-computer interaction, robotics, animation, and healthcare, driving advancements in areas like human-robot collaboration and motion capture technology.
Papers
A generic diffusion-based approach for 3D human pose prediction in the wild
Saeed Saadatnejad, Ali Rasekh, Mohammadreza Mofayezi, Yasamin Medghalchi, Sara Rajabzadeh, Taylor Mordan, Alexandre Alahi
ACRNet: Attention Cube Regression Network for Multi-view Real-time 3D Human Pose Estimation in Telemedicine
Boce Hu, Chenfei Zhu, Xupeng Ai, Sunil K. Agrawal