Personalized 3D Human Pose and Shape Refinement
- URL: http://arxiv.org/abs/2403.11634v1
- Date: Mon, 18 Mar 2024 10:13:53 GMT
- Title: Personalized 3D Human Pose and Shape Refinement
- Authors: Tom Wehrbein, Bodo Rosenhahn, Iain Matthews, Carsten Stoll,
- Abstract summary: regression-based methods have dominated the field of 3D human pose and shape estimation.
We propose to construct dense correspondences between initial human model estimates and the corresponding images.
We show that our approach not only consistently leads to better image-model alignment, but also to improved 3D accuracy.
- Score: 19.082329060985455
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, regression-based methods have dominated the field of 3D human pose and shape estimation. Despite their promising results, a common issue is the misalignment between predictions and image observations, often caused by minor joint rotation errors that accumulate along the kinematic chain. To address this issue, we propose to construct dense correspondences between initial human model estimates and the corresponding images that can be used to refine the initial predictions. To this end, we utilize renderings of the 3D models to predict per-pixel 2D displacements between the synthetic renderings and the RGB images. This allows us to effectively integrate and exploit appearance information of the persons. Our per-pixel displacements can be efficiently transformed to per-visible-vertex displacements and then used for 3D model refinement by minimizing a reprojection loss. To demonstrate the effectiveness of our approach, we refine the initial 3D human mesh predictions of multiple models using different refinement procedures on 3DPW and RICH. We show that our approach not only consistently leads to better image-model alignment, but also to improved 3D accuracy.
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