VCoME: Verbal Video Composition with Multimodal Editing Effects
Weibo Gong, Xiaojie Jin, Xin Li, Dongliang He, Xinglong Wu

TL;DR
VCoME introduces a multimodal generative framework for verbal video composition with editing effects, enhancing clarity and visual appeal efficiently.
Contribution
The paper presents a novel task of verbal video composition with editing effects and proposes VCoME, a large multimodal model that automates effect placement and style control.
Findings
VCoME generates professional-quality videos.
It is 85 times more efficient than professional editors.
Extensive evaluations confirm its effectiveness.
Abstract
Verbal videos, featuring voice-overs or text overlays, provide valuable content but present significant challenges in composition, especially when incorporating editing effects to enhance clarity and visual appeal. In this paper, we introduce the novel task of verbal video composition with editing effects. This task aims to generate coherent and visually appealing verbal videos by integrating multimodal editing effects across textual, visual, and audio categories. To achieve this, we curate a large-scale dataset of video effects compositions from publicly available sources. We then formulate this task as a generative problem, involving the identification of appropriate positions in the verbal content and the recommendation of editing effects for these positions. To address this task, we propose VCoME, a general framework that employs a large multimodal model to generate editing effects…
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Taxonomy
TopicsMultimedia Communication and Technology · Natural Language Processing Techniques · Subtitles and Audiovisual Media
