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A generalized parametric 3D shape representation for articulated pose estimation

Authors :
Ding, Meng
Fan, Guoliang
Publication Year :
2018

Abstract

We present a novel parametric 3D shape representation, Generalized sum of Gaussians (G-SoG), which is particularly suitable for pose estimation of articulated objects. Compared with the original sum-of-Gaussians (SoG), G-SoG can handle both isotropic and anisotropic Gaussians, leading to a more flexible and adaptable shape representation yet with much fewer anisotropic Gaussians involved. An articulated shape template can be developed by embedding G-SoG in a tree-structured skeleton model to represent an articulated object. We further derive a differentiable similarity function between G-SoG (the template) and SoG (observed data) that can be optimized analytically for efficient pose estimation. The experimental results on a standard human pose estimation dataset show the effectiveness and advantages of G-SoG over the original SoG as well as the promise compared with the recent algorithms that use more complicated shape models.<br />Comment: 6 pages, 5 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1803.01780
Document Type :
Working Paper