CVOct 16, 2025

Consistent text-to-image generation via scene de-contextualization

arXiv:2510.14553v1h-index: 10
Originality Highly original
AI Analysis

This addresses the challenge of generating identity-preserving images in real-world applications where target scenes are unknown or variable, offering a flexible solution for consistent text-to-image generation.

The paper tackles the problem of identity shift in consistent text-to-image generation by identifying scene contextualization as a key cause, and proposes a training-free prompt editing method called Scene De-Contextualization (SDeC) that significantly enhances identity preservation across diverse scenes without requiring prior knowledge of all target scenes.

Consistent text-to-image (T2I) generation seeks to produce identity-preserving images of the same subject across diverse scenes, yet it often fails due to a phenomenon called identity (ID) shift. Previous methods have tackled this issue, but typically rely on the unrealistic assumption of knowing all target scenes in advance. This paper reveals that a key source of ID shift is the native correlation between subject and scene context, called scene contextualization, which arises naturally as T2I models fit the training distribution of vast natural images. We formally prove the near-universality of this scene-ID correlation and derive theoretical bounds on its strength. On this basis, we propose a novel, efficient, training-free prompt embedding editing approach, called Scene De-Contextualization (SDeC), that imposes an inversion process of T2I's built-in scene contextualization. Specifically, it identifies and suppresses the latent scene-ID correlation within the ID prompt's embedding by quantifying the SVD directional stability to adaptively re-weight the corresponding eigenvalues. Critically, SDeC allows for per-scene use (one scene per prompt) without requiring prior access to all target scenes. This makes it a highly flexible and general solution well-suited to real-world applications where such prior knowledge is often unavailable or varies over time. Experiments demonstrate that SDeC significantly enhances identity preservation while maintaining scene diversity.

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