GRCVJun 4, 2025

Facial Appearance Capture at Home with Patch-Level Reflectance Prior

arXiv:2506.03478v17 citationsh-index: 13Has CodeACM Trans Graph
Originality Highly original
AI Analysis

This enables everyday users to create high-quality digital clones of themselves, representing a strong specific gain in facial appearance capture.

The paper tackles the problem of low-quality facial reflectance reconstruction from smartphone videos by introducing a method that uses a co-located smartphone and flashlight in dim settings, achieving results that significantly close the gap with studio recordings.

Existing facial appearance capture methods can reconstruct plausible facial reflectance from smartphone-recorded videos. However, the reconstruction quality is still far behind the ones based on studio recordings. This paper fills the gap by developing a novel daily-used solution with a co-located smartphone and flashlight video capture setting in a dim room. To enhance the quality, our key observation is to solve facial reflectance maps within the data distribution of studio-scanned ones. Specifically, we first learn a diffusion prior over the Light Stage scans and then steer it to produce the reflectance map that best matches the captured images. We propose to train the diffusion prior at the patch level to improve generalization ability and training stability, as current Light Stage datasets are in ultra-high resolution but limited in data size. Tailored to this prior, we propose a patch-level posterior sampling technique to sample seamless full-resolution reflectance maps from this patch-level diffusion model. Experiments demonstrate our method closes the quality gap between low-cost and studio recordings by a large margin, opening the door for everyday users to clone themselves to the digital world. Our code will be released at https://github.com/yxuhan/DoRA.

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