Rapid Face Asset Acquisition with Recurrent Feature Alignment

Author:

Liu Shichen1,Cai Yunxuan2,Chen Haiwei1,Zhou Yichao3,Zhao Yajie2

Affiliation:

1. University of Southern California

2. USC Institute for Creative Technologies

3. University of California Berkeley

Abstract

We present Re current F eature A lignment (ReFA), an end-to-end neural network for the very rapid creation of production-grade face assets from multi-view images. ReFA is on par with the industrial pipelines in quality for producing accurate, complete, registered, and textured assets directly applicable to physically-based rendering, but produces the asset end-to-end, fully automatically at a significantly faster speed at 4.5 FPS, which is unprecedented among neural-based techniques. Our method represents face geometry as a position map in the UV space. The network first extracts per-pixel features in both the multi-view image space and the UV space. A recurrent module then iteratively optimizes the geometry by projecting the image-space features to the UV space and comparing them with a reference UV-space feature. The optimized geometry then provides pixel-aligned signals for the inference of high-resolution textures. Experiments have validated that ReFA achieves a median error of 0.603 mm in geometry reconstruction, is robust to extreme pose and expression, and excels in sparse-view settings. We believe that the progress achieved by our network enables lightweight, fast face assets acquisition that significantly boosts the downstream applications, such as avatar creation and facial performance capture. It will also enable massive database capturing for deep learning purposes.

Funder

U.S. Army Research Laboratory

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

Reference62 articles.

1. A Survey of Photometric Stereo Techniques

2. Expression invariant 3D face recognition with a Morphable Model

3. Deep Facial Non-Rigid Multi-View Stereo

4. What Does 2D Geometric Information Really Tell Us About 3D Face Shape?

5. Thabo Beeler , Bernd Bickel , Paul A. Beardsley , Bob Sumner , and Markus H . Gross . 2010 . High-quality single-shot capture of facial geometry. In ACM Transactions on Graphics (TOG) . Thabo Beeler, Bernd Bickel, Paul A. Beardsley, Bob Sumner, and Markus H. Gross. 2010. High-quality single-shot capture of facial geometry. In ACM Transactions on Graphics (TOG).

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