IdentityStory: Taming Your Identity-Preserving Generator for Human-Centric Story Generation (AAAI 2026)
Abstract
Recent visual generative models enable story generation with consistent characters from text, but human-centric story generation faces additional challenges, such as maintaining detailed and diverse human face consistency and coordinating multiple characters across different images. This paper presents IdentityStory, a framework for human-centric story generation that ensures consistent character identity across multiple sequential images. By taming identity-preserving generators, the framework features two key components: Iterative Identity Discovery, which extracts cohesive character identities, and Re-denoising Identity Injection, which re-denoises images to inject identities while preserving desired context. Experiments on the ConsiStory-Human benchmark demonstrate that IdentityStory outperforms existing methods, particularly in face consistency, and supports multi-character combinations. The framework also shows strong potential for applications such as infinite-length story generation and dynamic character composition.
- 2026.01: Code will be cleaned and released in the coming weeks due to the tight schedule. Please stay tuned!
- 2026.01: IdentityStory will be presented on 24 Jan in Singapore EXPO. See you all then!
- 2025.12: Our paper is available at arXiv!