Contrast enhancement for improved blood vessels retinal segmentation using top-hat transformation and otsu thresholding

M. Arhami, Anita Desiani, S. Yahdin, Ajeng Islamia Putri, Rifkie Primartha, Husaini Husaini
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引用次数: 2

Abstract

Diabetic Retinopathy is a effect of diabetes. It results abnormalities in the retinal blood vessels. The abnormalities can cause blurry vision and blindness. Automatic retinal blood vessels segmentation on retinal image can detect abnormalities in these blood vessels, actually resulting in faster and more accurate segmentation results. The paper proposed an automatic blood vessel segmentation method that combined Otsu Thresholding with image enhancement techniques. In image enhancement, it combined CLAHE with Top-hat transformation to improve image quality. The study used DRIVE dataset that provided retinal image data. The image data in dataset was generated by the fundus camera. The CLAHE and Top-hat transformation methods were applied to rise the contrast and reduce noise on the image. The images that had good quality could help the segmentation process to find blood vessels in retinal images appropriately by a computer. It improved the performance of the segmentation method for detecting blood vessels in retinal image. Otsu Thresholding was used to segment blood vessel pixels and other pixels as background by local threshold. To evaluation performance of the proposed method, the study has been measured accuracy, sensitivity, and specificity. The DRIVE dataset's study results showed that the averages of accuracy, sensitivity, and specificity values were 94.7%, 72.28%, and 96.87%, respectively. It indicated that the proposed method was successful and well to work on blood vessels segmentation retinal images especially for thick blood vessels.
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利用顶帽变换和otsu阈值法增强血管视网膜分割
糖尿病视网膜病变是糖尿病的一种症状。它会导致视网膜血管异常。这些异常会导致视力模糊和失明。在视网膜图像上进行视网膜血管自动分割,可以检测出这些血管的异常,从而得到更快、更准确的分割结果。提出了一种将Otsu阈值分割与图像增强技术相结合的血管自动分割方法。在图像增强方面,将CLAHE与Top-hat变换相结合,提高图像质量。本研究使用了提供视网膜图像数据的DRIVE数据集。数据集中的图像数据由眼底相机生成。采用CLAHE变换和Top-hat变换方法提高图像对比度,降低图像噪声。图像质量好的图像可以帮助计算机在视网膜图像中进行适当的血管分割。改进了视网膜图像血管检测分割方法的性能。采用Otsu阈值法,通过局部阈值分割血管像素和其他像素作为背景。为了评估所提出的方法的性能,研究测量了准确性、敏感性和特异性。DRIVE数据集的研究结果显示,准确率、灵敏度和特异性的平均值分别为94.7%、72.28%和96.87%。结果表明,该方法对血管分割视网膜图像,特别是粗血管的分割效果良好。
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International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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3.00
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