Learning-by-Novel-View-Synthesis for Full-Face Appearance-based 3D Gaze
Estimation
- URL: http://arxiv.org/abs/2201.07927v2
- Date: Sun, 23 Jan 2022 06:54:22 GMT
- Title: Learning-by-Novel-View-Synthesis for Full-Face Appearance-based 3D Gaze
Estimation
- Authors: Jiawei Qin, Takuru Shimoyama, Yusuke Sugano
- Abstract summary: This work examines a novel approach for synthesizing gaze estimation training data based on monocular 3D face reconstruction.
Unlike prior works using multi-view reconstruction, photo-realistic CG models, or generative neural networks, our approach can manipulate and extend the head pose range of existing training data.
- Score: 8.929311633814411
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Despite recent advances in appearance-based gaze estimation techniques, the
need for training data that covers the target head pose and gaze distribution
remains a crucial challenge for practical deployment. This work examines a
novel approach for synthesizing gaze estimation training data based on
monocular 3D face reconstruction. Unlike prior works using multi-view
reconstruction, photo-realistic CG models, or generative neural networks, our
approach can manipulate and extend the head pose range of existing training
data without any additional requirements. We introduce a projective matching
procedure to align the reconstructed 3D facial mesh to the camera coordinate
system and synthesize face images with accurate gaze labels. We also propose a
mask-guided gaze estimation model and data augmentation strategies to further
improve the estimation accuracy by taking advantage of the synthetic training
data. Experiments using multiple public datasets show that our approach can
significantly improve the estimation performance on challenging cross-dataset
settings with non-overlapping gaze distributions.
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