Learning to Harmonize Cross-Vendor X-ray Images by Non-linear Image Dynamics Correction

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Abstract

In this paper, we explore how conventional image enhancement can improve model robustness in medical image analysis. By applying commonly used normalization methods to images from various vendors and studying their influence on model generalization in transfer learning, we show that the nonlinear characteristics of domain-specific image dynamics cannot be addressed by simple linear transforms. To tackle this issue, we reformulate the image harmonization task as an exposure correction problem and propose a method termed Global Deep Curve Estimation (GDCE) to reduce domain-specific exposure mismatch. GDCE performs enhancement via a pre-defined polynomial function and is trained with a “domain discriminator”, aiming to improve model transparency in downstream tasks compared to existing black-box methods. Code available at https://github.com/YCL92/GDCE.
OriginalsprogEngelsk
TitelMedical Image Analysis and Understanding conference
Antal sider14
ForlagSpringer Nature Switzerland
Publikationsdato15 jul. 2025
Sider102-115
ISBN (Trykt)9783031986901
DOI
StatusUdgivet - 15 jul. 2025
BegivenhedMedical Image Understanding and Analysis - United Kingdom, Leeds, Storbritannien
Varighed: 15 jul. 202517 jul. 2025
Konferencens nummer: 29
https://conferences.leeds.ac.uk/miua/

Konference

KonferenceMedical Image Understanding and Analysis
Nummer29
LokationUnited Kingdom
Land/OmrådeStorbritannien
ByLeeds
Periode15/07/202517/07/2025
Internetadresse
NavnLecture Notes in Computer Science
Vol/bind15917
ISSN0302-9743

Emneord

  • Image harmonization
  • Medical imaging
  • Transfer learning

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