CVGRFeb 10, 2025

TANGLED: Generating 3D Hair Strands from Images with Arbitrary Styles and Viewpoints

arXiv:2502.06392v14 citationsh-index: 13
AI Analysis

This work addresses the need for culturally inclusive digital avatars and applications in animation and AR by improving hairstyle realism and diversity.

The paper tackled the problem of generating 3D hair strands from images with diverse styles and viewpoints, achieving flexible and robust generation across various input conditions through a novel diffusion-based pipeline.

Hairstyles are intricate and culturally significant with various geometries, textures, and structures. Existing text or image-guided generation methods fail to handle the richness and complexity of diverse styles. We present TANGLED, a novel approach for 3D hair strand generation that accommodates diverse image inputs across styles, viewpoints, and quantities of input views. TANGLED employs a three-step pipeline. First, our MultiHair Dataset provides 457 diverse hairstyles annotated with 74 attributes, emphasizing complex and culturally significant styles to improve model generalization. Second, we propose a diffusion framework conditioned on multi-view linearts that can capture topological cues (e.g., strand density and parting lines) while filtering out noise. By leveraging a latent diffusion model with cross-attention on lineart features, our method achieves flexible and robust 3D hair generation across diverse input conditions. Third, a parametric post-processing module enforces braid-specific constraints to maintain coherence in complex structures. This framework not only advances hairstyle realism and diversity but also enables culturally inclusive digital avatars and novel applications like sketch-based 3D strand editing for animation and augmented reality.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes