Among numerous videos shared on the web, well-edited ones always attract more attention. However, it is difficult for inexperienced users to make well-edited videos because it requires professional expertise and immense manual labor. To meet the demands for non-experts, we present Transcript-to-Video -- a weakly-supervised framework that uses texts as input to automatically create video sequences from an extensive collection of shots. Specifically, we propose a Content Retrieval Module and a Temporal Coherent Module to learn visual-language representations and model shot sequencing styles, respectively. For fast inference, we introduce an efficient search strategy for real-time video clip sequencing. Quantitative results and user studies demonstrate empirically that the proposed learning framework can retrieve content-relevant shots while creating plausible video sequences in terms of style. Besides, the run-time performance analysis shows that our framework can support real-world applications.
@article{arxiv.2107.11851,
title = {Transcript to Video: Efficient Clip Sequencing from Texts},
author = {Yu Xiong and Fabian Caba Heilbron and Dahua Lin},
journal= {arXiv preprint arXiv:2107.11851},
year = {2023}
}
Comments
Tech Report; Demo and project page at http://www.xiongyu.me/projects/transcript2video/