CharaConsist: Fine-Grained Consistent Character Generation
This work addresses the challenge of maintaining character consistency in text-to-image generation for real-world applications, representing an incremental improvement over existing training-free methods.
The paper tackles the problem of generating consistent characters in text-to-image models, particularly addressing failures in background details and identity inconsistencies during motion variations, and proposes CharaConsist to achieve fine-grained consistency for both foreground and background, supporting continuous or discrete shots.
In text-to-image generation, producing a series of consistent contents that preserve the same identity is highly valuable for real-world applications. Although a few works have explored training-free methods to enhance the consistency of generated subjects, we observe that they suffer from the following problems. First, they fail to maintain consistent background details, which limits their applicability. Furthermore, when the foreground character undergoes large motion variations, inconsistencies in identity and clothing details become evident. To address these problems, we propose CharaConsist, which employs point-tracking attention and adaptive token merge along with decoupled control of the foreground and background. CharaConsist enables fine-grained consistency for both foreground and background, supporting the generation of one character in continuous shots within a fixed scene or in discrete shots across different scenes. Moreover, CharaConsist is the first consistent generation method tailored for text-to-image DiT model. Its ability to maintain fine-grained consistency, combined with the larger capacity of latest base model, enables it to produce high-quality visual outputs, broadening its applicability to a wider range of real-world scenarios. The source code has been released at https://github.com/Murray-Wang/CharaConsist