Title of article :
Integration of bottom-up/top-down approaches for 2D pose estimation using probabilistic Gaussian modelling
Author/Authors :
Kuo، نويسنده , , Paul and Makris، نويسنده , , Dimitrios and Nebel، نويسنده , , Jean-Christophe، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
In this paper, we address the recovery of human 2D postures from monocular image sequences. We propose a novel pose estimation framework which is based on the integration of probabilistic bottom-up and top-down processes which iteratively refine each other: foreground pixels are segmented using image cues whereas a hierarchical 2D body model fitting constraints body partitions. Its main advantages are twofold. First, the presented framework is activity-independent since it does not rely on learning any motion model. Secondly, we propose a confidence score indicating the quality of each estimated pose. Our study also reveals significant discrepancy between ground truth joint positions according to whether they are defined by humans or a motion capture system. Quantitative and qualitative results are presented on a variety of video sequences to validate our approach.
Keywords :
Human body pose estimation , Object recognition , Pattern classification , Ground truth , Confidence measure , Stochastic clustering , Gaussian mixture modelling
Journal title :
Computer Vision and Image Understanding
Journal title :
Computer Vision and Image Understanding