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High-fidelity Face Tracking for AR/VR via Deep Lighting Adaptation

Lele Chen, Chen Cao, Fernando De la Torre, Jason Saragih, Chenliang Xu, Yaser Sheikh

202132 citationsDOI

Abstract

3D video avatars can empower virtual communications by providing compression, privacy, entertainment, and a sense of presence in AR/VR. Best 3D photo-realistic AR/VR avatars driven by video, that can minimize uncanny effects, rely on person-specific models. However, existing person-specific photo-realistic 3D models are not robust to lighting, hence their results typically miss subtle facial behaviors and cause artifacts in the avatar. This is a major drawback for the scalability of these models in communication systems (e.g., Messenger, Skype, FaceTime) and AR/VR. This paper addresses previous limitations by learning a deep learning lighting model, that in combination with a high-quality 3D face tracking algorithm, provides a method for subtle and robust facial motion transfer from a regular video to a 3D photo-realistic avatar. Extensive experimental validation and comparisons to other state-of-the-art methods demonstrate the effectiveness of the proposed framework in real-world scenarios with variability in pose, expression, and illumination. Our project page can be found at this website.

Topics & Concepts

Computer scienceAvatarArtificial intelligenceScalabilityVirtual realityComputer visionFace (sociological concept)Adaptation (eye)Facial expressionAnimationFacial recognition systemHigh fidelityHuman–computer interactionComputer graphics (images)Pattern recognition (psychology)EngineeringDatabaseSociologySocial scienceElectrical engineeringOpticsPhysicsFace recognition and analysisVideo Surveillance and Tracking MethodsAdvanced Vision and Imaging
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