CVGRJul 28, 2022

Neural Strands: Learning Hair Geometry and Appearance from Multi-View Images

arXiv:2207.14067v151 citationsh-index: 57
Originality Highly original
AI Analysis

This enables realistic hair modeling for applications like computer graphics and virtual reality, representing a novel integration of appearance and explicit geometry learning.

The paper tackles the problem of modeling hair geometry and appearance from multi-view images, achieving real-time rendering with high-fidelity view-dependent effects and intuitive control.

We present Neural Strands, a novel learning framework for modeling accurate hair geometry and appearance from multi-view image inputs. The learned hair model can be rendered in real-time from any viewpoint with high-fidelity view-dependent effects. Our model achieves intuitive shape and style control unlike volumetric counterparts. To enable these properties, we propose a novel hair representation based on a neural scalp texture that encodes the geometry and appearance of individual strands at each texel location. Furthermore, we introduce a novel neural rendering framework based on rasterization of the learned hair strands. Our neural rendering is strand-accurate and anti-aliased, making the rendering view-consistent and photorealistic. Combining appearance with a multi-view geometric prior, we enable, for the first time, the joint learning of appearance and explicit hair geometry from a multi-view setup. We demonstrate the efficacy of our approach in terms of fidelity and efficiency for various hairstyles.

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