Three-stages hard exudates segmentation in retinal images

Worapan Kusakunniran, Qiang Wul, Panrasee Ritthipravad, Jian Zhang
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引用次数: 4

Abstract

This paper proposes a three-stages method of hard exudate segmentation in retinal images. The first stage is the pre-processing. The color transfer is applied to make all retinal images to have the same color characteristics, based on statistical analysis. Then, only a yellow channel of each image is used in the further analysis. The second stage is the blob initialization. The blob detection based on color, size, and shape including circularity and convexity is used to identify initial pixels of hard exudates. The detected blobs must not be inside the optic disk. The third stage is the segmentation. The graph cut is iteratively applied on partitions of the image. The fine-tune segmentation in sub-images is necessary because the portion of hard exudates is significantly less than the portion of non-hard exudates. The proposed method is evaluated using the two well-known datasets, namely e_ophtha and DIARETDB1, in both aspects of pixel-level and image-level. Based on the comprehensive comparisons with the existing works, the proposed method is shown to be very promising. In the image-level, it achieves 96% sensitivity and 94% specificity for the e_ophtha dataset, and 96% sensitivity and 98% specificity for the DIARETDB1 dataset.
视网膜图像硬渗出物的三阶段分割
提出了一种三阶段分割视网膜图像硬渗出物的方法。第一阶段是预处理。在统计分析的基础上,应用颜色转移使所有视网膜图像具有相同的颜色特征。然后,只使用每张图像的一个黄色通道进行进一步分析。第二阶段是blob初始化。基于颜色、大小和形状(包括圆度和凹凸度)的斑点检测用于识别硬渗出物的初始像素。检测到的斑点不能在视盘内。第三阶段是细分。图割迭代地应用于图像的分区。由于硬渗出物的部分明显小于非硬渗出物的部分,因此需要在子图像中进行微调分割。利用e_ophtha和DIARETDB1这两个众所周知的数据集,从像素级和图像级两个方面对所提出的方法进行了评估。通过与已有工作的综合比较,表明该方法是很有前途的。在图像级,e_ophtha数据集的灵敏度为96%,特异度为94%,DIARETDB1数据集的灵敏度为96%,特异度为98%。
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