DocumentCode
1522286
Title
An Optimization Based Framework for Human Pose Estimation
Author
Yan, Junchi ; Shen, Shuhan ; Li, Yin ; Liu, Yuncai
Author_Institution
Shanghai Jiaotong Univ., Shanghai, China
Volume
17
Issue
8
fYear
2010
Firstpage
766
Lastpage
769
Abstract
In computer vision community, human pose estimation and nonrigid shape recovery have evolved into different subfields. The state-of-the-art optimization techniques have been applied to the problem of deformable surface reconstruction successfully and recent methods in this area have focused on designing formulations that are easier to solve. In general, these techniques lay their success on the assumption that sufficient 2-D-3-D correspondences can be detected. By contrast, confronted with the similar ambiguity problem, many techniques for human pose estimation adopt stochastic searching or discriminative predictions, which allow for more generative image cues. However, the global optimization cannot be guaranteed via the stochastic methods; and discriminative techniques usually suffer from inaccuracy. In this letter, we absorb ideas from both domains and propose a unified approach for articulated human pose estimation. Specifically, we optimize the human pose to account for the discriminative pose prediction, bone length preservation in parallel with the point-topoint image observation. Moreover, the L2 norm minimization is solved iteratively as a linear system with high computational efficiency.
Keywords
computer vision; image reconstruction; optimisation; pose estimation; stochastic processes; computer vision community; deformable surface reconstruction; discriminative predictions; human pose estimation; nonrigid shape recovery; optimization based framework; stochastic searching; $L_{2}$ norm; Human pose estimation; twin gaussian process;
fLanguage
English
Journal_Title
Signal Processing Letters, IEEE
Publisher
ieee
ISSN
1070-9908
Type
jour
DOI
10.1109/LSP.2010.2053845
Filename
5492191
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