2020
DOI: 10.48550/arxiv.2008.06843
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Learning Flow-based Feature Warping for Face Frontalization with Illumination Inconsistent Supervision

Abstract: Despite recent advances in deep learning-based face frontalization methods, photo-realistic and illumination preserving frontal face synthesis is still challenging due to large pose and illumination discrepancy during training. We propose a novel Flow-based Feature Warping Model (FFWM) which can learn to synthesize photo-realistic and illumination preserving frontal images with illumination inconsistent supervision. Specifically, an Illumination Preserving Module (IPM) is proposed to learn illumination preserv… Show more

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