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首页> 外文期刊>Journal of mechanics in medicine and biology >NEW SEGMENTATION METHODOLOGY FOR EXUDATE DETECTION IN COLOR FUNDUS IMAGES
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NEW SEGMENTATION METHODOLOGY FOR EXUDATE DETECTION IN COLOR FUNDUS IMAGES

机译:彩色眼底图像渗出检测的新分段方法

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In this work, we developed an approach based on mathematical morphology and the kappa-means clustering algorithm to detect hard exudates (HEs) in images taken by retinography from different diabetic patients. The presence of exudates within the macular region is a hallmark of diabetic macular edema and is detected by diagnostics with high sensitivity. In ophthalmologic images, the segmentation of HEs is essential to characterize the shape of the lesion for analysis. In this domain, several approaches have been employed for exudate extraction. Some authors have used only the mathematical morphology, but this approach does not provide very good detection of exudates. In this paper, we combined the kappa-means clustering algorithm and the mathematical morphology. This approach was tested on a set of 50 ophthalmologic images. The obtained results were compared with manual segmentation by an ophthalmologist.
机译:在这项工作中,我们开发了一种基于数学形态学和kappa-means聚类算法的方法,用于检测通过视网膜成像从不同糖尿病患者获取的图像中的硬性渗出液(HE)。黄斑区域内渗出液的存在是糖尿病性黄斑水肿的标志,并且通过诊断以高灵敏度被检测到。在眼科图像中,HE的分割对于表征病变的形状以进行分析至关重要。在这一领域,已经采用了几种方法进行渗出液提取。一些作者只使用了数学形态学,但是这种方法不能很好地检测渗出液。在本文中,我们结合了kappa-means聚类算法和数学形态学。在一组50个眼科图像上对该方法进行了测试。将获得的结果与眼科医生的手动分割进行了比较。

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