Publication | Closed Access
Neural Video Portrait Relighting in Real-time via Consistency Modeling
31
Citations
53
References
2021
Year
Image AnalysisMachine VisionLighting ConsistencyEngineeringDifferentiable RenderingVideo ProcessingEye TrackingScene UnderstandingVideo Consistency SupervisionVideo HallucinationComputer ScienceHuman Image SynthesisVideo PortraitsDeep LearningVideo RestorationConsistency ModelingComputer VisionSynthetic Image Generation
Video portraits relighting is critical in user-facing human photography, especially for immersive VR/AR experience. Recent advances still fail to recover consistent relit result under dynamic illuminations from monocular RGB stream, suffering from the lack of video consistency supervision. In this paper, we propose a neural approach for real-time, high-quality and coherent video portrait relighting, which jointly models the semantic, temporal and lighting consistency using a new dynamic OLAT dataset. We propose a hybrid structure and lighting disentanglement in an encoder-decoder architecture, which combines a multi-task and adversarial training strategy for semantic-aware consistency modeling. We adopt a temporal modeling scheme via flow-based supervision to encode the conjugated temporal consistency in a cross manner. We also propose a lighting sampling strategy to model the illumination consistency and mutation for natural portrait light manipulation in real-world. Extensive experiments demonstrate the effectiveness of our approach for consistent video portrait light-editing and relighting, even using mobile computing.
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