Wavelet based Fine-to-Coarse Retinal Blood Vessel Extraction using U-net Model

Kamini Upadhyay, M. Agrawal, P. Vashist
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引用次数: 2

Abstract

Segmentation of retinal blood vessels is a crucial preliminary step in the diagnosis of any retinal disease. While extracting vessel-map, the biggest challenge is to segment fine vessels which are in poor contrast with the non-vessel background. Key contribution of this work is a fine-to-coarse retinal vessel extraction model with high sensitivity. Proposed algorithm uses a directional wavelet to generate a novel multiscale, three-channel image. To generate this image, only the real coefficients of wavelet transform are used, which facilitate the extraction of fine vessel-ends. Multiple scales cover different thicknesses of vessels. The vessel-enhanced image catalyzes the learning of deep U-net model for pixel classification. This work uses STARE and DRIVE databases for experimentation. Algorithm has performed robustly well in cross-database testing, even in pathological environment. Proposed method has produced state-of-the-art results. The vessel segmentation is outstanding in terms of sensitivity measure which validates better extraction of fine vessels. In this paper, an elaborate comparison with the other existing methods is also presented.
基于U-net模型的小波精细到粗视网膜血管提取
视网膜血管的分割是任何视网膜疾病诊断的关键的初步步骤。在血管图的提取过程中,最大的挑战是如何分割细小的血管,这些血管与非血管背景的对比度很差。本工作的关键贡献是一个高灵敏度的精细到粗的视网膜血管提取模型。该算法使用方向小波来生成一种新的多尺度、三通道图像。在生成该图像时,只使用小波变换的实系数,便于提取精细的血管末端。多个鳞片覆盖不同厚度的血管。血管增强图像催化深度U-net模型的学习,用于像素分类。本工作使用STARE和DRIVE数据库进行实验。该算法在跨数据库测试中表现良好,甚至在病理环境中也表现良好。所提出的方法产生了最先进的结果。血管分割在灵敏度测量方面具有突出的特点,可以更好地提取细血管。本文还与其他现有方法进行了详细的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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