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Vessel segmentation in eye fundus images using ensemble learning and curve fitting

机译:使用集成学习和曲线拟合的眼底图像血管分割

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A novel segmentation algorithm for the detection of retinal vessels in funduscopic images is proposed, in which the benefits of both supervised and unsupervised methods are exploited. Ensemble learning based segmentation (ELBS) is employed for the segmentation of large and medium sized vessels, after which a local curve fitting technique is used for the detection of the thin retinal vessels. The general ELBS algorithm is modified to boost performance by the incorporation of specific knowledge of false negative segmentation result areas. Curve fitting is based on a two-hypotheses polynomial regression and is capable of automatically removing outliers from a point cloud. Evaluation on the DRIVE database compared the presented method favorably to previously published algorithms. Sensitivity and specificity were 0.8854 and 0.9363.
机译:提出了一种新颖的分割算法,用于检测眼底图像中的视网膜血管,该方法利用了有监督和无监督两种方法的优势。基于集合学习的分割(ELBS)用于大中型血管的分割,然后使用局部曲线拟合技术检测视网膜细血管。通过合并错误的否定分段结果区域的特定知识,对常规ELBS算法进行了修改,以提高性能。曲线拟合基于二假设多项式回归,并且能够自动从点云中移除离群值。在DRIVE数据库上进行的评估将本方法与以前发布的算法进行了比较。敏感性和特异性分别为0.8854和0.9363。

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