MFG Sampling: Solving Inverse Problems in Multi-level High-Frequency Guidance via Diffusion Models
Citations

SCOPUS

0

초록

Deep learning is widely applied in medical imaging, but models trained on one domain often underperform on another due to distribution shifts such as color and resolution differences across hospitals and equipment. Consequently, domain adaptation is essential to adjust target domain characteristics while preserving critical pathological features and patient-specific details. We propose a Fourier-based approach that retains source domain high-frequency components and adapts low-frequency content via a diffusion-model-based inverse problem. Rather than using fixed thresholds, we formulate a linear multi-level frequency extraction and guide sampling with our Multi-Level High-Frequency Guidance Sampling (MFG Sampling). This unsupervised method requires no paired data, offers noise robustness through frequency-based guidance, and can concurrently address sub-tasks such as super-resolution and deblurring. Classification experiments on a fundus dataset validate its effectiveness in domain adaptation.

키워드

Diffusion ModelDomain AdaptationInverse problemsMedical Artificial Intelligence
제목
MFG Sampling: Solving Inverse Problems in Multi-level High-Frequency Guidance via Diffusion Models
저자
Bae, JungwooShin, Jitae
DOI
10.1007/978-3-032-09569-5_22
발행일
2026
유형
Conference Paper
저널명
Lecture Notes in Computer Science
16206 LNCS
페이지
216 ~ 224