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Speech driven video editing via an audio-conditioned diffusion model

Dan Bigioi, Shubhajit Basak, Michał Stypułkowski, Maciej Zięba, Hugh Jordan, Rachel McDonnell, Peter Corcoran

2024Image and Vision Computing32 citationsDOIOpen Access PDF

Abstract

Taking inspiration from recent developments in visual generative tasks using diffusion models, we propose a method for end-to-end speech-driven video editing using a denoising diffusion model. Given a video of a talking person, and a separate auditory speech recording, the lip and jaw motions are re-synchronised without relying on intermediate structural representations such as facial landmarks or a 3D face model. We show this is possible by conditioning a denoising diffusion model on audio mel spectral features to generate synchronised facial motion. Proof of concept results are demonstrated on both single-speaker and multi-speaker video editing, providing a baseline model on the CREMA-D audiovisual data set. To the best of our knowledge, this is the first work to demonstrate and validate the feasibility of applying end-to-end denoising diffusion models to the task of audio-driven video editing. All code, datasets, and models used as part of this work are made publicly available here: https://danbigioi.github.io/DiffusionVideoEditing/.

Topics & Concepts

Computer scienceSpeech recognitionVideo editingNoise reductionFace (sociological concept)Task (project management)TRACE (psycholinguistics)Set (abstract data type)DiffusionCode (set theory)Artificial intelligenceComputer visionThermodynamicsLinguisticsManagementEconomicsSociologySocial scienceProgramming languagePhilosophyPhysicsGenerative Adversarial Networks and Image SynthesisSpeech and Audio ProcessingMusic and Audio Processing
Speech driven video editing via an audio-conditioned diffusion model | Litcius