StoryBench: A Multifaceted Benchmark for Continuous Story Visualization

Abstract

Generating video stories from text prompts is a complex task. In addition to having high visual quality, videos need to realistically adhere to a sequence of text prompts whilst being consistent throughout the frames. Creating a benchmark for video generation requires data annotated over time, which contrasts with the single caption used often in video datasets. To fill this gap, we collect comprehensive human annotations on three existing datasets, and introduce StoryBench: a new, challenging multi-task benchmark to reliably evaluate forthcoming text-to-video models. Our benchmark includes three video generation tasks of increasing difficulty: action execution, where the next action must be generated starting from a conditioning video; story continuation, where a sequence of actions must be executed starting from a conditioning video; and story generation, where a video must be generated from only text prompts. We evaluate small yet strong text-to-video baselines, and show the benefits of training on story-like data algorithmically generated from existing video captions. Finally, we establish guidelines for human evaluation of video stories, and reaffirm the need of better automatic metrics for video generation. StoryBench aims at encouraging future research efforts in this exciting new area.

Cite

Text

Bugliarello et al. "StoryBench: A Multifaceted Benchmark for Continuous Story Visualization." Neural Information Processing Systems, 2023.

Markdown

[Bugliarello et al. "StoryBench: A Multifaceted Benchmark for Continuous Story Visualization." Neural Information Processing Systems, 2023.](https://mlanthology.org/neurips/2023/bugliarello2023neurips-storybench/)

BibTeX

@inproceedings{bugliarello2023neurips-storybench,
  title     = {{StoryBench: A Multifaceted Benchmark for Continuous Story Visualization}},
  author    = {Bugliarello, Emanuele and Moraldo, H. Hernan and Villegas, Ruben and Babaeizadeh, Mohammad and Saffar, Mohammad Taghi and Zhang, Han and Erhan, Dumitru and Ferrari, Vittorio and Kindermans, Pieter-Jan and Voigtlaender, Paul},
  booktitle = {Neural Information Processing Systems},
  year      = {2023},
  url       = {https://mlanthology.org/neurips/2023/bugliarello2023neurips-storybench/}
}