OTRE:其中最优传输引导的非配对图像到图像的翻译满足正则化通过增强。

Wenhui Zhu, Peijie Qiu, Oana M Dumitrascu, Jacob M Sobczak, Mohammad Farazi, Zhangsihao Yang, Keshav Nandakumar, Yalin Wang
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引用次数: 0

摘要

非晶状体视网膜彩色眼底摄影(CFP)由于不需要瞳孔扩张的优点而广泛应用,然而,由于操作人员,系统缺陷或患者相关原因,容易导致质量差。最佳的视网膜图像质量是强制准确的医学诊断和自动分析。在此,我们利用最优传输(OT)理论提出了一种非配对图像到图像的转换方案,用于将低质量的视网膜CFPs映射到高质量的对应对象。此外,为了提高我们的图像增强管道在临床实践中的灵活性、鲁棒性和适用性,我们推广了一种最先进的基于模型的图像重建方法,即通过去噪进行正则化,通过插入我们的ot引导的图像到图像翻译网络学习到的先验。我们将其命名为正则化增强(RE)。我们在三个公开可用的视网膜图像数据集上验证了集成框架OTRE,通过评估增强后的质量及其在各种下游任务中的表现,包括糖尿病视网膜病变分级、血管分割和糖尿病病变分割。实验结果表明,我们提出的框架优于一些最先进的无监督竞争对手和最先进的监督方法。
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OTRE: Where Optimal Transport Guided Unpaired Image-to-Image Translation Meets Regularization by Enhancing.

Non-mydriatic retinal color fundus photography (CFP) is widely available due to the advantage of not requiring pupillary dilation, however, is prone to poor quality due to operators, systemic imperfections, or patient-related causes. Optimal retinal image quality is mandated for accurate medical diagnoses and automated analyses. Herein, we leveraged the Optimal Transport (OT) theory to propose an unpaired image-to-image translation scheme for mapping low-quality retinal CFPs to high-quality counterparts. Furthermore, to improve the flexibility, robustness, and applicability of our image enhancement pipeline in the clinical practice, we generalized a state-of-the-art model-based image reconstruction method, regularization by denoising, by plugging in priors learned by our OT-guided image-to-image translation network. We named it as regularization by enhancing (RE). We validated the integrated framework, OTRE, on three publicly available retinal image datasets by assessing the quality after enhancement and their performance on various downstream tasks, including diabetic retinopathy grading, vessel segmentation, and diabetic lesion segmentation. The experimental results demonstrated the superiority of our proposed framework over some state-of-the-art unsupervised competitors and a state-of-the-art supervised method.

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