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Retinal Blood Vessel Segmentation with Neural Network by Using Gray-Level Co-Occurrence Matrix-Based Features

机译:基于灰度共生矩阵的神经网络视网膜血管分割

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摘要

This paper focuses on the issue of extracting retina vessels with supervised approach. Since the green channel in the retina image has the best contrast between vessel and non-vessel, this channel is used to separate vessels. In our approach we are proposing a technique of using gray-level co-occurrence matrix method for composition of the retinal images. It is based on fact that the co-occurrence matrix of retina image describes the transition of intensities between neighbour pixels, indicating spatial structural information of retina image. So, we first extract the features vector based on specified characteristics of the gray-level co-occurrence matrix and then we use these features vector to train a neural network approach for the classification method which makes our proposed approach more effective. Obtained results from the experiments in DRIVE and STARE database shows the advantage of the proposed method in contrast to current methods. This advantage is evaluated by the criteria of sensitivity, specificity, area under ROC and accuracy. The result of such a conversion as the input vector of a multilayer perceptron neural network will be trained and tested. Although in recent years different methods have been presented in this respect, but results of simulation shows that the proposed algorithm has a very high efficiency than the other researches.
机译:本文重点研究在有监督的方法下提取视网膜血管的问题。由于视网膜图像中的绿色通道在血管和非血管之间具有最佳对比度,因此该通道用于分离血管。在我们的方法中,我们提出了一种使用灰度共现矩阵方法构成视网膜图像的技术。基于这样的事实,视网膜图像的共现矩阵描述了相邻像素之间强度的转变,从而指示了视网膜图像的空间结构信息。因此,我们首先根据灰度共生矩阵的指定特征提取特征向量,然后使用这些特征向量为分类方法训练一种神经网络方法,从而使我们提出的方法更加有效。从DRIVE和STARE数据库中的实验获得的结果表明,与现有方法相比,该方法具有优势。通过敏感性,特异性,ROC下面积和准确性的标准来评估此优势。作为多层感知器神经网络的输入向量的转换结果将受到训练和测试。尽管近年来在这方面提出了不同的方法,但是仿真结果表明,所提出的算法比其他研究具有很高的效率。

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