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
Efficient Virtual View Selection for 3D Hand Pose Estimation
Jian Cheng, Yanguang Wan, Dexin Zuo, Cuixia Ma, Jian Gu, Ping Tan, Hongan Wang, Xiaoming Deng, Yinda Zhang
Temporal Feature Alignment and Mutual Information Maximization for Video-Based Human Pose Estimation
Zhenguang Liu, Runyang Feng, Haoming Chen, Shuang Wu, Yixing Gao, Yunjun Gao, Xiang Wang
EPro-PnP: Generalized End-to-End Probabilistic Perspective-n-Points for Monocular Object Pose Estimation
Hansheng Chen, Pichao Wang, Fan Wang, Wei Tian, Lu Xiong, Hao Li
AIMusicGuru: Music Assisted Human Pose Correction
Snehesh Shrestha, Cornelia Fermüller, Tianyu Huang, Pyone Thant Win, Adam Zukerman, Chethan M. Parameshwara, Yiannis Aloimonos
NeRF-Pose: A First-Reconstruct-Then-Regress Approach for Weakly-supervised 6D Object Pose Estimation
Fu Li, Hao Yu, Ivan Shugurov, Benjamin Busam, Shaowu Yang, Slobodan Ilic
Probabilistic Rotation Representation With an Efficiently Computable Bingham Loss Function and Its Application to Pose Estimation
Hiroya Sato, Takuya Ikeda, Koichi Nishiwaki