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A novel retinal vessel extraction algorithm based on matched filtering and gradient vector flow

机译:基于匹配滤波和梯度矢量流的新型视网膜血管提取算法

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摘要

The microvasculature network of retina plays an important role in the study and diagnosis of retinal diseases (age-related macular degeneration and diabetic retinopathy for example). Although it is possible to noninvasively acquire high-resolution retinal images with modern retinal imaging technologies, non-uniform illumination, the low contrast of thin vessels and the background noises all make it difficult for diagnosis. In this paper, we introduce a novel retinal vessel extraction algorithm based on gradient vector flow and matched filtering to segment retinal vessels with different likelihood. Firstly, we use isotropic Gaussian kernel and adaptive histogram equalization to smooth and enhance the retinal images respectively. Secondly, a multi-scale matched filtering method is adopted to extract the retinal vessels. Then, the gradient vector flow algorithm is introduced to locate the edge of the retinal vessels. Finally, we combine the results of matched filtering method and gradient vector flow algorithm to extract the vessels at different likelihood levels. The experiments demonstrate that our algorithm is efficient and the intensities of vessel images exactly represent the likelihood of the vessels.
机译:视网膜的微血管网络在视网膜疾病(例如年龄相关性黄斑变性和糖尿病性视网膜病)的研究和诊断中起着重要作用。尽管可以使用现代视网膜成像技术以非侵入性的方式获取高分辨率的视网膜图像,但照明不均匀,细血管的对比度低以及背景噪声都使诊断变得困难。在本文中,我们介绍了一种基于梯度矢量流和匹配滤波的新的视网膜血管提取算法,以分割具有不同可能性的视网膜血管。首先,我们使用各向同性的高斯核和自适应直方图均衡化分别平滑和增强视网膜图像。其次,采用多尺度匹配滤波方法提取视网膜血管。然后,引入梯度矢量流算法来定位视网膜血管的边缘。最后,我们将匹配滤波方法和梯度矢量流算法的结果相结合,以提取不同可能性级别的血管。实验表明,我们的算法是有效的,血管图像的强度恰好代表了血管的可能性。

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