HQG-Net: Unpaired Medical Image Enhancement with High-Quality Guidance
Chunming He, Kai Li, Guoxia Xu, Jiangpeng Yan, Longxiang Tang, Yulun, Zhang, Xiu Li, Yaowei Wang

TL;DR
This paper introduces HQG-Net, a novel unpaired medical image enhancement method that explicitly incorporates high-quality cues into the enhancement process, improving visual quality and downstream task performance without relying on paired data.
Contribution
The paper proposes a variational, cue-guided enhancement framework that explicitly encodes HQ information and employs a bi-level learning scheme for better visual and task-specific outcomes.
Findings
Outperforms existing methods in enhancement quality
Improves downstream task performance
Validated on three medical datasets, including two new ones
Abstract
Unpaired Medical Image Enhancement (UMIE) aims to transform a low-quality (LQ) medical image into a high-quality (HQ) one without relying on paired images for training. While most existing approaches are based on Pix2Pix/CycleGAN and are effective to some extent, they fail to explicitly use HQ information to guide the enhancement process, which can lead to undesired artifacts and structural distortions. In this paper, we propose a novel UMIE approach that avoids the above limitation of existing methods by directly encoding HQ cues into the LQ enhancement process in a variational fashion and thus model the UMIE task under the joint distribution between the LQ and HQ domains. Specifically, we extract features from an HQ image and explicitly insert the features, which are expected to encode HQ cues, into the enhancement network to guide the LQ enhancement with the variational normalization…
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Taxonomy
TopicsAI in cancer detection · Image Enhancement Techniques · Advanced Image Processing Techniques
Methodsfail
