A Novel Self-Intersection Penalty Term for Statistical Body Shape Models and Its Applications in 3D Pose Estimation
Zaiqiang Wu, Wei Jiang, Hao Luo, Lin Cheng

TL;DR
This paper introduces a new self-intersection penalty term for statistical body shape models that improves 3D pose estimation accuracy by effectively preventing mesh self-intersections without approximations.
Contribution
A novel self-intersection penalty term with manually derived gradients for statistical body shape models, enhancing 3D pose estimation and mesh reconstruction.
Findings
Reduces self-intersection in body meshes effectively.
Improves 3D pose estimation accuracy.
Applicable to triangular mesh-based 3D reconstruction.
Abstract
Statistical body shape models are widely used in 3D pose estimation due to their low-dimensional parameters representation. However, it is difficult to avoid self-intersection between body parts accurately. Motivated by this fact, we proposed a novel self-intersection penalty term for statistical body shape models applied in 3D pose estimation. To avoid the trouble of computing self-intersection for complex surfaces like the body meshes, the gradient of our proposed self-intersection penalty term is manually derived from the perspective of geometry. First, the self-intersection penalty term is defined as the volume of the self-intersection region. To calculate the partial derivatives with respect to the coordinates of the vertices, we employed detection rays to divide vertices of statistical body shape models into different groups depending on whether the vertex is in the region of…
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Taxonomy
Topics3D Shape Modeling and Analysis · Human Pose and Action Recognition · Advanced Vision and Imaging
