Low-Level Dataset Distillation for Medical Image Enhancement
Fengzhi Xu, Ziyuan Yang, Mengyu Sun, Joey Tianyi Zhou, Yi Zhang

TL;DR
This paper introduces a novel low-level dataset distillation method for medical image enhancement, leveraging anatomical priors and personalized generation to reduce data size while maintaining pixel fidelity and ensuring patient privacy.
Contribution
It proposes the first low-level dataset distillation approach for medical images, combining anatomical priors and personalized modules to improve data efficiency and privacy preservation.
Findings
Effective preservation of pixel-level fidelity in distilled data
Enhanced privacy by excluding raw patient data
Improved data efficiency for medical image enhancement tasks
Abstract
Medical image enhancement is clinically valuable, but existing methods require large-scale datasets to learn complex pixel-level mappings. However, the substantial training and storage costs associated with these datasets hinder their practical deployment. While dataset distillation (DD) can alleviate these burdens, existing methods mainly target high-level tasks, where multiple samples share the same label. This many-to-one mapping allows distilled data to capture shared semantics and achieve information compression. In contrast, low-level tasks involve a many-to-many mapping that requires pixel-level fidelity, making low-level DD an underdetermined problem, as a small distilled dataset cannot fully constrain the dense pixel-level mappings. To address this, we propose the first low-level DD method for medical image enhancement. We first leverage anatomical similarities across patients…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Advanced Neural Network Applications · Image Enhancement Techniques
