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MatchDiffusion: Training-free Generation of Match-cuts

Authors :
Pardo, Alejandro
Pizzati, Fabio
Zhang, Tong
Pondaven, Alexander
Torr, Philip
Perez, Juan Camilo
Ghanem, Bernard
Publication Year :
2024

Abstract

Match-cuts are powerful cinematic tools that create seamless transitions between scenes, delivering strong visual and metaphorical connections. However, crafting match-cuts is a challenging, resource-intensive process requiring deliberate artistic planning. In MatchDiffusion, we present the first training-free method for match-cut generation using text-to-video diffusion models. MatchDiffusion leverages a key property of diffusion models: early denoising steps define the scene's broad structure, while later steps add details. Guided by this insight, MatchDiffusion employs "Joint Diffusion" to initialize generation for two prompts from shared noise, aligning structure and motion. It then applies "Disjoint Diffusion", allowing the videos to diverge and introduce unique details. This approach produces visually coherent videos suited for match-cuts. User studies and metrics demonstrate MatchDiffusion's effectiveness and potential to democratize match-cut creation.<br />Comment: https://matchdiffusion.github.io

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.18677
Document Type :
Working Paper