基于相位拉伸变换的高分辨率眼底图像视网膜血管分割灵敏度提高新方法

Kartika Firdausy, O. Wahyunggoro, H. A. Nugroho, M. B. Sasongko
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引用次数: 1

摘要

眼底照片被广泛用于眼科检查。视网膜血管的准确识别可以为许多健康疾病的临床诊断提供有用的信息。虽然已经提出了几种方法来分割视网膜血管图像,但这些方法的灵敏度似乎还有待提高。该算法的灵敏度是指该算法正确识别视网膜血管像素的能力。此外,视网膜图像的分辨率和质量也在迅速提高。因此,需要新的分割方法来克服高分辨率图像的问题。本文提出了一种基于相位拉伸变换(PST)函数为核心的边缘检测方法,提高了视网膜血管分割的性能。在应用边缘检测阶段之前,对输入的视网膜图像进行预处理。在预处理步骤中,对绿色通道图像进行非局部均值滤波,然后采用对比度有限自适应直方图均衡化(CLAHE)和中值滤波对视网膜图像进行增强。应用边缘检测阶段后,进行CLAHE、中值滤波、阈值分割、形态学开闭等后处理步骤,得到分割后的图像。利用来自高分辨率眼底(HRF)公共数据库的图像对该方法进行了评估,并在提高视网膜血管检测的灵敏度方面取得了令人鼓舞的结果。该方法具有更好的分割性能,平均灵敏度为0.813,比几种基准测试技术有明显的改进
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A new approach for sensitivity improvement of retinal blood vessel segmentation in high-resolution fundus images based on phase stretch transform
The eye-fundus photograph is widely used for eye examinations. Accurate identification of retinal blood vessels could reveal information that is helpful for clinical diagnoses of many health disorders. Although several methods have been proposed to segment images of retinal blood vessels, the sensitivity of these methods is plausible to be improved. The algorithm’s sensitivity refers to the algorithm’s ability to identify retinal vessel pixels correctly. Furthermore, the resolution and quality of retinal images are improving rapidly. Consequently, new segmentation methods are in demand to overcome issues from high-resolution images. This study presented improved performance of retinal vessel segmentation using a novel edge detection scheme based on the phase stretch transform (PST) function as its kernel. Before applying the edge detection stage, the input retinal images were pre-processed. During the pre-processing step, non-local means filtering on the green channel image, followed by contrast limited adaptive histogram equalization (CLAHE) and median filtering, were applied to enhance the retinal image. After applying the edge detection stage, the post-processing steps, including the CLAHE, median filtering, thresholding, morphological opening, and closing, were implemented to obtain the segmented image. The proposed method was evaluated using images from the high-resolution fundus (HRF) public database and yielded promising results for sensitivity improvement of retinal blood vessel detection. The proposed approach contributes to a better segmentation performance with an average sensitivity of 0.813, representing a clear improvement over several benchmark techniques
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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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