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An improved vessel extraction scheme from retinal fundus images

机译:从视网膜眼底图像改进的血管提取方案

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Vessel extraction from retinal fundus images is essential for the diagnosis of different opthalmologic diseases like glaucoma, diabetic retinopathy and hypertension. It is a challenging task due to presence of several noises embedded with thin vessels. In this article, we have proposed an improved vessel extraction scheme from retinal fundus images. First, mathematical morphological operation is performed on each planes of the RGB image to remove the vessels for obtaining noise in the image. Next, the original RGB and vessel removed RGB image are transformed into negative gray scale image. These negative gray scale images are subtracted and finally binarized (BW1) by leveling the image. It still contains some granular noise which is removed based on the area of connected component. Further, previously detected vessels are replaced in the gray-scale image with mean value of the gray-scale image and then the gray-scale image is enhanced to obtain the thin vessels. Next, the enhanced image is binarized and thin vessels are obtained (BW2). Finally, the thin vessel image (BW2) is merged with the previously obtained binary image (BW1) and finally we obtain the vessel extracted image. To analyze the performance of our proposed method we have experimented on publicly available DRIVE dataset. We have observed that our algorithm have provides satisfactory performance with the sensitivity, specificity and accuracy of 0.7260, 0.9802 and 0.9563 respectively which is better than the most of the recent works.
机译:视网膜眼底图像的血管提取对于诊断诸如青光眼,糖尿病视网膜病变和高血压等不同视疏药病的诊断至关重要。由于存在嵌入薄血管的几个噪声,这是一个具有挑战性的任务。在本文中,我们提出了一种来自视网膜眼底图像的改进的血管提取方案。首先,在RGB图像的每个平面上执行数学形态学操作以移除用于获得图像中的噪声的血管。接下来,将原始RGB和血管移除RGB图像被转换为​​负灰度图像。通过调平图像来减去这些负灰度级图像并最终二值化(BW1)。它仍然包含一些基于连接部件区域去除的粒状噪声。此外,在具有灰度图像的平均值的灰度图像中更换先前检测到的血管,然后增强了灰度图像以获得薄血管。接下来,增强图像是二值化的,获得薄容器(BW2)。最后,将薄血管图像(BW2)与先前获得的二进制图像(BW1)合并,最后我们获得血管提取的图像。要分析我们所提出的方法的表现,我们已经在公开可用的驱动器数据集上进行了实验。我们观察到,我们的算法具有0.7260,0.9802和0.9563的灵敏度,特异性和准确性的令人满意的性能,这些性能分别优于最近的作品。

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