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Automatic extraction of retinal vessels based on gradient orientation analysis

机译:基于梯度取向分析的视网膜血管自动提取

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Retinal vessel extraction is important for the diagnosis of numerous eye diseases. It plays an important role in automatic retinal disease screening systems. This paper presents an efficient method for the automated analysis of retinal images. Fine anatomical features, such as blood vessels, are detected by analyzing the gradient orientation of the retinal images. The method is independent of image intensity and gradient magnitude; therefore, it performs accurately despite the common problems inherent to the retinal images, such as low contrast and non-uniform illumination. Blood vessels with varying diameters are detected by applying this method at multiple scales. The blood vessel network is then extracted from the detected features by manual thresholding followed by a few simple morphological operations. Based on the binary vessel map obtained, we attempt to evaluate the performance of the proposed algorithm on two publicly available databases (DRIVE and STARE database) of manually labeled images. The receiver operating characteristics (ROC), area under ROC and segmentation accuracy is taken as the performance criteria. The results demonstrate that the proposed method outperforms other unsupervised methods in respect of maximum average accuracy (MAA). The proposed method results in the area under ROC and the accuracy of 0.9037, 0.9358 for DRIVE database 0.9117, 0.9423 for STARE database respectively.
机译:视网膜血管摘除对许多眼科疾病的诊断很重要。它在自动视网膜疾病筛查系统中起着重要作用。本文提出了一种自动分析视网膜图像的有效方法。通过分析视网膜图像的梯度方向,可以检测出精细的解剖特征,例如血管。该方法与图像强度和梯度大小无关。因此,尽管视网膜图像固有的常见问题(例如对比度低和照明不均匀),它仍能准确执行。通过在多个尺度上应用此方法,可以检测到直径不同的血管。然后,通过手动阈值处理以及一些简单的形态学操作,从检测到的特征中提取出血管网络。基于获得的二进制血管图,我们尝试在手动标记图像的两个公共数据库(DRIVE和STARE数据库)上评估所提出算法的性能。接收器的工作特性(ROC),ROC下的面积和分段精度均作为性能标准。结果表明,该方法在最大平均精度(MAA)方面优于其他无监督方法。所提出的方法得出ROC下的面积,对于DRIVE数据库的精确度分别为0.9037、0.9358,对于STARE数据库的精确度为0.9117,0.9423。

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