A Bayesian Framework for Sparse Representation-Based 3-D Human Pose Estimation

作者:Babagholami Mohamadabadi Behnam*; Jourabloo Amin; Zarghami Ali; Kasaei Shohreh
来源:IEEE Signal Processing Letters, 2014, 21(3): 297-300.
DOI:10.1109/LSP.2014.2301726

摘要

A Bayesian framework for 3-D human pose estimation from monocular images based on sparse representation (SR) is introduced. Our probabilistic approach aims at simultaneously learning two overcomplete dictionaries (one for the visual input space and the other for the pose space) with a shared sparse representation. Existing SR-based pose estimation approaches only offer a point estimation of the dictionary and the sparse codes. Therefore, they might be unreliable when the number of training examples is small. Our Bayesian framework estimates a posterior distribution for the sparse codes and the dictionaries from labeled training data. Hence, it is robust to overfitting on small-size training data. Experimental results on various human activities show that the proposed method is superior to the state-of-the-art pose estimation algorithms.

  • 出版日期2014-3