Human Pose Estimation
Human pose estimation aims to accurately determine the location of human body joints from various input modalities, such as images, videos, or sensor data. Current research focuses on improving accuracy and efficiency, particularly in challenging scenarios like occlusions and low-resolution inputs, through the development and refinement of transformer-based models, graph convolutional networks, and other deep learning architectures. These advancements have significant implications for numerous applications, including human-robot interaction, healthcare, sports analysis, and augmented/virtual reality, by enabling more robust and efficient systems for movement analysis and human-computer interaction.
Papers
Denoising and Selecting Pseudo-Heatmaps for Semi-Supervised Human Pose Estimation
Zhuoran Yu, Manchen Wang, Yanbei Chen, Paolo Favaro, Davide Modolo
Revisiting Cephalometric Landmark Detection from the view of Human Pose Estimation with Lightweight Super-Resolution Head
Qian Wu, Si Yong Yeo, Yufei Chen, Jun Liu
On the Query Strategies for Efficient Online Active Distillation
Michele Boldo, Enrico Martini, Mirco De Marchi, Stefano Aldegheri, Nicola Bombieri
DiffHPE: Robust, Coherent 3D Human Pose Lifting with Diffusion
Cédric Rommel, Eduardo Valle, Mickaël Chen, Souhaiel Khalfaoui, Renaud Marlet, Matthieu Cord, Patrick Pérez