Publication | Closed Access
Audio-driven facial animation by joint end-to-end learning of pose and emotion
421
Citations
41
References
2017
Year
MusicArtificial IntelligenceAvatar AnimationEngineeringMachine LearningAudio-driven Facial AnimationJoint End-to-end LearningSocial SciencesVideo InterpretationSpeech RecognitionMachine Learning TechniqueAffective ComputingRobot LearningComputer ScienceHuman Image SynthesisDeep LearningDeep Neural NetworkSpeech CommunicationComputer VisionFacial Expression RecognitionFacial AnimationSpeech ProcessingEmotionEmotion Recognition
We present a machine learning technique for driving 3D facial animation by audio input in real time and with low latency. Our deep neural network learns a mapping from input waveforms to the 3D vertex coordinates of a face model, and simultaneously discovers a compact, latent code that disambiguates the variations in facial expression that cannot be explained by the audio alone. During inference, the latent code can be used as an intuitive control for the emotional state of the face puppet. We train our network with 3--5 minutes of high-quality animation data obtained using traditional, vision-based performance capture methods. Even though our primary goal is to model the speaking style of a single actor, our model yields reasonable results even when driven with audio from other speakers with different gender, accent, or language, as we demonstrate with a user study. The results are applicable to in-game dialogue, low-cost localization, virtual reality avatars, and telepresence.
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