Efficient and robust 3D blind harmonization for large domain gaps
Journal:
arXiv
Published Date:
Apr 30, 2025
Abstract
Blind harmonization has emerged as a promising technique for MR image
harmonization to achieve scale-invariant representations, requiring only target
domain data (i.e., no source domain data necessary). However, existing methods
face limitations such as inter-slice heterogeneity in 3D, moderate image
quality, and limited performance for a large domain gap. To address these
challenges, we introduce BlindHarmonyDiff, a novel blind 3D harmonization
framework that leverages an edge-to-image model tailored specifically to
harmonization. Our framework employs a 3D rectified flow trained on target
domain images to reconstruct the original image from an edge map, then yielding
a harmonized image from the edge of a source domain image. We propose
multi-stride patch training for efficient 3D training and a refinement module
for robust inference by suppressing hallucination. Extensive experiments
demonstrate that BlindHarmonyDiff outperforms prior arts by harmonizing diverse
source domain images to the target domain, achieving higher correspondence to
the target domain characteristics. Downstream task-based quality assessments
such as tissue segmentation and age prediction on diverse MR scanners further
confirm the effectiveness of our approach and demonstrate the capability of our
robust and generalizable blind harmonization.