CVGRDec 13, 2024

Quaffure: Real-Time Quasi-Static Neural Hair Simulation

arXiv:2412.10061v213 citationsh-index: 11CVPR
Originality Highly original
AI Analysis

This addresses the problem of computational limitations in real-time hair simulation for avatar applications, representing a strong specific gain in efficiency.

The paper tackles the challenge of realistic hair motion for real-time avatars by proposing a neural approach to predict physically plausible hair deformations, achieving inference times of a few milliseconds on consumer hardware and scaling to predict 1000 grooms in 0.3 seconds.

Realistic hair motion is crucial for high-quality avatars, but it is often limited by the computational resources available for real-time applications. To address this challenge, we propose a novel neural approach to predict physically plausible hair deformations that generalizes to various body poses, shapes, and hairstyles. Our model is trained using a self-supervised loss, eliminating the need for expensive data generation and storage. We demonstrate our method's effectiveness through numerous results across a wide range of pose and shape variations, showcasing its robust generalization capabilities and temporally smooth results. Our approach is highly suitable for real-time applications with an inference time of only a few milliseconds on consumer hardware and its ability to scale to predicting the drape of 1000 grooms in 0.3 seconds. Please see our project page here following https://tuurstuyck.github.io/quaffure/quaffure.html

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