Synthesizing Coherent Story with Auto-Regressive Latent Diffusion Models
About
Conditioned diffusion models have demonstrated state-of-the-art text-to-image synthesis capacity. Recently, most works focus on synthesizing independent images; While for real-world applications, it is common and necessary to generate a series of coherent images for story-stelling. In this work, we mainly focus on story visualization and continuation tasks and propose AR-LDM, a latent diffusion model auto-regressively conditioned on history captions and generated images. Moreover, AR-LDM can generalize to new characters through adaptation. To our best knowledge, this is the first work successfully leveraging diffusion models for coherent visual story synthesizing. Quantitative results show that AR-LDM achieves SoTA FID scores on PororoSV, FlintstonesSV, and the newly introduced challenging dataset VIST containing natural images. Large-scale human evaluations show that AR-LDM has superior performance in terms of quality, relevance, and consistency.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Visual Story Generation | PororoSV (test) | FID16.59 | 14 | |
| Story Visualization | StorySalon long stories (test) | CLIP-T0.216 | 13 | |
| Story Visualization | StorySalon regular-length (test) | CLIP-T0.239 | 10 | |
| Story Continuation | FlintstonesSV (test) | FID19.28 | 9 | |
| Regular-Length Story Visualization | StoryGen Regular-Length Story Visualization (Human Evaluation) | Alignment3.08 | 8 | |
| Story Visualization | PororoSV | FID16.59 | 7 | |
| Long Story Visualization | StoryGen Human Evaluation Set Long Story Visualization | Alignment3.3 | 7 | |
| Story Continuation | PororoSV | FID17.4 | 5 | |
| Story Continuation | VIST SIS | FID16.95 | 2 | |
| Story Continuation | VIST DII | FID17.03 | 2 |