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[bibtex]@InProceedings{Fan_2025_WACV, author = {Fan, Xulin and Gao, Heting and Chen, Ziyi and Chang, Peng and Han, Mei and Hasegawa-Johnson, Mark}, title = {SyncDiff: Diffusion-Based Talking Head Synthesis with Bottlenecked Temporal Visual Prior for Improved Synchronization}, booktitle = {Proceedings of the Winter Conference on Applications of Computer Vision (WACV)}, month = {February}, year = {2025}, pages = {4554-4563} }
SyncDiff: Diffusion-Based Talking Head Synthesis with Bottlenecked Temporal Visual Prior for Improved Synchronization
Abstract
Talking head synthesis also known as speech-to-lip synthesis reconstructs the facial motions that align with the given audio tracks. The synthesized videos are evaluated on mainly two aspects lip-speech synchronization and image fidelity. Recent studies demonstrate that GAN-based and diffusion-based models achieve state-of-the-art (SOTA) performance on this task with diffusion-based models achieving superior image fidelity but experiencing lower synchronization compared to their GAN-based counterparts. To this end we propose SyncDiff a simple yet effective approach to improve diffusion-based models using a temporal pose frame with information bottleneck and facial-informative audio features extracted from AVHuBERT as conditioning input into the diffusion process. We evaluate SyncDiff on two canonical talking head datasets LRS2 and LRS3 for direct comparison with other SOTA models. Experiments on LRS2/LRS3 datasets show that SyncDiff achieves a synchronization score 27.7%/62.3% relatively higher than previous diffusion-based methods while preserving their high-fidelity characteristics.
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