Tackling Structural Hallucination in Image Translation with Local Diffusion

17
citations
#707
in ECCV 2024
of 2387 papers
8
Top Authors
7
Data Points

Abstract

Recent developments in diffusion models have advanced conditioned image generation, yet they struggle with reconstructing out-of-distribution (OOD) images, such as unseen tumors in medical images, causing "image hallucination" and risking misdiagnosis. We hypothesize such hallucinations result from local OOD regions in the conditional images. We verify that partitioning the OOD region and conducting separate image generations alleviates hallucinations in several applications. From this, we propose a training-free diffusion framework that reduces hallucination with multiple Local Diffusion processes. Our approach involves OOD estimation followed by two modules: a "branching" module generates locally both within and outside OOD regions, and a "fusion" module integrates these predictions into one. Our evaluation shows our method mitigates hallucination over baseline models quantitatively and qualitatively, reducing misdiagnosis by 40% and 25% in the real-world medical and natural image datasets, respectively. It also demonstrates compatibility with various pre-trained diffusion models.

Citation History

Jan 26, 2026
15
Jan 26, 2026
15
Jan 27, 2026
15
Feb 3, 2026
16+1
Feb 13, 2026
17+1
Feb 13, 2026
17
Feb 13, 2026
17