Learning 3D Face Reconstruction with a Pose Guidance Network

Abstract

We present a self-supervised learning approach to learning monocular 3D face reconstruction with a pose guidance network. First, we unveil the bottleneck of pose estimation in prior parametric 3D face learning methods, and propose to utilize 3D face landmarks for estimating pose parameters. Then, we design a pose guidance network, which enables us to learn from both faces with fully labeled 3D landmarks and unlimited unlabeled in-the-wild face images. Our network is further augmented with a self-supervised learning scheme, which exploits face geometry information embedded in multiple frames of the same person, to alleviate the ill-pose nature of regressing 3D face geometry from a single image. These three insights yield a single approach that combines the complementary strengths of parametric model learning and data-driven learning techniques. We conduct a rigorous evaluation on the challenging AFLW2000-3D, Florence and FaceWarehouse datasets, and show that our method outperforms the state-of-the-art for all metrics.

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Pengpeng Liu
PhD Candidate in Computer Science

PhD Candidate in CSE Department, CUHK