Shape My Face: Registering 3D Face Scans by Surface-to-Surface Translation
Mehdi Bahri, Eimear O' Sullivan, Shunwang Gong, Feng Liu, Xiaoming, Liu, Michael M. Bronstein, Stefanos Zafeiriou

TL;DR
This paper introduces Shape-My-Face (SMF), a novel deep learning model for registering 3D face scans that is robust, fast, and generalizes well across diverse datasets, enabling shape manipulation and expression transfer.
Contribution
SMF is a new surface-to-surface translation model that improves 3D face registration by using an advanced encoder-decoder architecture with minimal supervision and high robustness.
Findings
SMF outperforms previous methods in registration accuracy.
The model generalizes well to in-the-wild face scans.
It enables shape manipulation and expression transfer.
Abstract
Standard registration algorithms need to be independently applied to each surface to register, following careful pre-processing and hand-tuning. Recently, learning-based approaches have emerged that reduce the registration of new scans to running inference with a previously-trained model. In this paper, we cast the registration task as a surface-to-surface translation problem, and design a model to reliably capture the latent geometric information directly from raw 3D face scans. We introduce Shape-My-Face (SMF), a powerful encoder-decoder architecture based on an improved point cloud encoder, a novel visual attention mechanism, graph convolutional decoders with skip connections, and a specialized mouth model that we smoothly integrate with the mesh convolutions. Compared to the previous state-of-the-art learning algorithms for non-rigid registration of face scans, SMF only requires the…
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