LGOct 14, 2025

Time-Correlated Video Bridge Matching

arXiv:2510.12453v11 citationsh-index: 6
Originality Incremental advance
AI Analysis

This addresses a critical limitation for video generation and manipulation tasks by maintaining temporal coherence, though it is an incremental extension of existing methods.

The paper tackled the problem of applying Bridge Matching models to time-correlated data sequences for video tasks, proposing Time-Correlated Video Bridge Matching (TCVBM) which achieved superior performance in frame interpolation, image-to-video generation, and video super-resolution.

Diffusion models excel in noise-to-data generation tasks, providing a mapping from a Gaussian distribution to a more complex data distribution. However they struggle to model translations between complex distributions, limiting their effectiveness in data-to-data tasks. While Bridge Matching (BM) models address this by finding the translation between data distributions, their application to time-correlated data sequences remains unexplored. This is a critical limitation for video generation and manipulation tasks, where maintaining temporal coherence is particularly important. To address this gap, we propose Time-Correlated Video Bridge Matching (TCVBM), a framework that extends BM to time-correlated data sequences in the video domain. TCVBM explicitly models inter-sequence dependencies within the diffusion bridge, directly incorporating temporal correlations into the sampling process. We compare our approach to classical methods based on bridge matching and diffusion models for three video-related tasks: frame interpolation, image-to-video generation, and video super-resolution. TCVBM achieves superior performance across multiple quantitative metrics, demonstrating enhanced generation quality and reconstruction fidelity.

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