Pose Estimation
Pose estimation, the task of determining the position and orientation of objects in space, is a core problem in computer vision with applications ranging from robotics and augmented reality to autonomous driving and medical imaging. Current research focuses on improving accuracy and robustness in challenging scenarios, such as occlusions, low-quality images, and unstructured environments, often employing deep learning models like transformers and convolutional neural networks, along with techniques like bundle adjustment and graph optimization for pose refinement. These advancements are driving progress in various fields by enabling more precise and reliable object manipulation, scene understanding, and human-computer interaction.
Papers
RING#: PR-by-PE Global Localization with Roto-translation Equivariant Gram Learning
Sha Lu, Xuecheng Xu, Yuxuan Wu, Haojian Lu, Xieyuanli Chen, Rong Xiong, Yue Wang
EMHI: A Multimodal Egocentric Human Motion Dataset with HMD and Body-Worn IMUs
Zhen Fan, Peng Dai, Zhuo Su, Xu Gao, Zheng Lv, Jiarui Zhang, Tianyuan Du, Guidong Wang, Yang Zhang
SpaRP: Fast 3D Object Reconstruction and Pose Estimation from Sparse Views
Chao Xu, Ang Li, Linghao Chen, Yulin Liu, Ruoxi Shi, Hao Su, Minghua Liu
Pose-GuideNet: Automatic Scanning Guidance for Fetal Head Ultrasound from Pose Estimation
Qianhui Men, Xiaoqing Guo, Aris T. Papageorghiou, J. Alison Noble