DreamStory: Open-Domain Story Visualization by LLM-Guided Multi-Subject Consistent Diffusion
Huiguo He, Huan Yang, Zixi Tuo, Yuan Zhou, Qiuyue Wang, Yuhang Zhang, Zeyu Liu, Wenhao Huang, Hongyang Chao, Jian Yin

TL;DR
DreamStory introduces an open-domain story visualization framework that combines large language models and a novel diffusion model to generate coherent, subject-consistent visual stories from textual narratives.
Contribution
The paper presents a new multi-subject consistent diffusion model guided by LLMs, enabling coherent multi-subject story visualization, along with a benchmark dataset DS-500 for evaluation.
Findings
Effective generation of subject-consistent story scenes
High accuracy in subject identification and scene coherence
Validated through extensive subjective and objective experiments
Abstract
Story visualization aims to create visually compelling images or videos corresponding to textual narratives. Despite recent advances in diffusion models yielding promising results, existing methods still struggle to create a coherent sequence of subject-consistent frames based solely on a story. To this end, we propose DreamStory, an automatic open-domain story visualization framework by leveraging the LLMs and a novel multi-subject consistent diffusion model. DreamStory consists of (1) an LLM acting as a story director and (2) an innovative Multi-Subject consistent Diffusion model (MSD) for generating consistent multi-subject across the images. First, DreamStory employs the LLM to generate descriptive prompts for subjects and scenes aligned with the story, annotating each scene's subjects for subsequent subject-consistent generation. Second, DreamStory utilizes these detailed subject…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling
MethodsDiffusion
