CVSDASMar 20, 2025

UniSync: A Unified Framework for Audio-Visual Synchronization

arXiv:2503.16357v14 citationsh-index: 5ICME
Originality Incremental advance
AI Analysis

This work addresses synchronization issues for content creators and viewers, representing an incremental improvement over existing methods.

The paper tackles the problem of audio-visual synchronization in speech videos by proposing UniSync, a framework that uses embedding similarities and improved contrastive learning, achieving superior performance on standard datasets and enhancing synchronization in talking face generation.

Precise audio-visual synchronization in speech videos is crucial for content quality and viewer comprehension. Existing methods have made significant strides in addressing this challenge through rule-based approaches and end-to-end learning techniques. However, these methods often rely on limited audio-visual representations and suboptimal learning strategies, potentially constraining their effectiveness in more complex scenarios. To address these limitations, we present UniSync, a novel approach for evaluating audio-visual synchronization using embedding similarities. UniSync offers broad compatibility with various audio representations (e.g., Mel spectrograms, HuBERT) and visual representations (e.g., RGB images, face parsing maps, facial landmarks, 3DMM), effectively handling their significant dimensional differences. We enhance the contrastive learning framework with a margin-based loss component and cross-speaker unsynchronized pairs, improving discriminative capabilities. UniSync outperforms existing methods on standard datasets and demonstrates versatility across diverse audio-visual representations. Its integration into talking face generation frameworks enhances synchronization quality in both natural and AI-generated content.

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