DiffLocks: Generating 3D Hair from a Single Image using Diffusion Models
Radu Alexandru Rosu, Keyu Wu, Yao Feng, Youyi Zheng, Michael J. Black

TL;DR
DiffLocks introduces a diffusion-based framework that generates detailed 3D hair models from a single image, overcoming data scarcity and handling complex hairstyles like curls with high accuracy.
Contribution
The paper presents a novel diffusion-transformer model trained on a large synthetic dataset to directly generate detailed 3D hair strands from a single image, including complex hairstyles.
Findings
Successfully reconstructs highly curled hair from a single image.
Creates the largest synthetic hair dataset with 40K hairstyles.
Achieves detailed 3D hair generation without post-processing.
Abstract
We address the task of generating 3D hair geometry from a single image, which is challenging due to the diversity of hairstyles and the lack of paired image-to-3D hair data. Previous methods are primarily trained on synthetic data and cope with the limited amount of such data by using low-dimensional intermediate representations, such as guide strands and scalp-level embeddings, that require post-processing to decode, upsample, and add realism. These approaches fail to reconstruct detailed hair, struggle with curly hair, or are limited to handling only a few hairstyles. To overcome these limitations, we propose DiffLocks, a novel framework that enables detailed reconstruction of a wide variety of hairstyles directly from a single image. First, we address the lack of 3D hair data by automating the creation of the largest synthetic hair dataset to date, containing 40K hairstyles. Second,…
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Taxonomy
TopicsHair Growth and Disorders · Generative Adversarial Networks and Image Synthesis · Face recognition and analysis
MethodsDiffusion
