CVDec 6, 2023

AVID: Any-Length Video Inpainting with Diffusion Model

arXiv:2312.03816v389 citationsh-index: 33CVPR
Originality Incremental advance
AI Analysis

This work solves video editing tasks for content creators by enabling flexible and consistent inpainting, though it is incremental as it builds on diffusion models for images.

The paper tackles text-guided video inpainting by addressing challenges like temporal consistency, varied inpainting types, and variable video length, introducing AVID with motion modules and a Temporal MultiDiffusion pipeline to achieve high-quality results across different durations.

Recent advances in diffusion models have successfully enabled text-guided image inpainting. While it seems straightforward to extend such editing capability into the video domain, there have been fewer works regarding text-guided video inpainting. Given a video, a masked region at its initial frame, and an editing prompt, it requires a model to do infilling at each frame following the editing guidance while keeping the out-of-mask region intact. There are three main challenges in text-guided video inpainting: ($i$) temporal consistency of the edited video, ($ii$) supporting different inpainting types at different structural fidelity levels, and ($iii$) dealing with variable video length. To address these challenges, we introduce Any-Length Video Inpainting with Diffusion Model, dubbed as AVID. At its core, our model is equipped with effective motion modules and adjustable structure guidance, for fixed-length video inpainting. Building on top of that, we propose a novel Temporal MultiDiffusion sampling pipeline with a middle-frame attention guidance mechanism, facilitating the generation of videos with any desired duration. Our comprehensive experiments show our model can robustly deal with various inpainting types at different video duration ranges, with high quality. More visualization results are made publicly available at https://zhang-zx.github.io/AVID/ .

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