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3 months ago

GODIVA: Generating Open-DomaIn Videos from nAtural Descriptions

Chenfei Wu Lun Huang Qianxi Zhang Binyang Li Lei Ji Fan Yang Guillermo Sapiro Nan Duan

GODIVA: Generating Open-DomaIn Videos from nAtural Descriptions

Abstract

Generating videos from text is a challenging task due to its high computational requirements for training and infinite possible answers for evaluation. Existing works typically experiment on simple or small datasets, where the generalization ability is quite limited. In this work, we propose GODIVA, an open-domain text-to-video pretrained model that can generate videos from text in an auto-regressive manner using a three-dimensional sparse attention mechanism. We pretrain our model on Howto100M, a large-scale text-video dataset that contains more than 136 million text-video pairs. Experiments show that GODIVA not only can be fine-tuned on downstream video generation tasks, but also has a good zero-shot capability on unseen texts. We also propose a new metric called Relative Matching (RM) to automatically evaluate the video generation quality. Several challenges are listed and discussed as future work.

Code Repositories

mehdidc/DALLE_clip_score
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
text-to-video-generation-on-msr-vttGODIVA
CLIPSIM: 0.2402

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GODIVA: Generating Open-DomaIn Videos from nAtural Descriptions | Papers | HyperAI