CVApr 1, 2023

SeSDF: Self-evolved Signed Distance Field for Implicit 3D Clothed Human Reconstruction

arXiv:2304.00359v126 citationsh-index: 34
Originality Incremental advance
AI Analysis

This addresses the challenge of flexible and detailed human reconstruction for applications like virtual reality or animation, though it builds incrementally on existing parametric models.

The paper tackles the problem of reconstructing detailed 3D clothed human models from single or uncalibrated multi-view images, achieving significant superiority over state-of-the-art methods on public benchmarks.

We address the problem of clothed human reconstruction from a single image or uncalibrated multi-view images. Existing methods struggle with reconstructing detailed geometry of a clothed human and often require a calibrated setting for multi-view reconstruction. We propose a flexible framework which, by leveraging the parametric SMPL-X model, can take an arbitrary number of input images to reconstruct a clothed human model under an uncalibrated setting. At the core of our framework is our novel self-evolved signed distance field (SeSDF) module which allows the framework to learn to deform the signed distance field (SDF) derived from the fitted SMPL-X model, such that detailed geometry reflecting the actual clothed human can be encoded for better reconstruction. Besides, we propose a simple method for self-calibration of multi-view images via the fitted SMPL-X parameters. This lifts the requirement of tedious manual calibration and largely increases the flexibility of our method. Further, we introduce an effective occlusion-aware feature fusion strategy to account for the most useful features to reconstruct the human model. We thoroughly evaluate our framework on public benchmarks, demonstrating significant superiority over the state-of-the-arts both qualitatively and quantitatively.

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