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A supervised blood vessel segmentation technique for digital Fundus images using Zernike Moment based features

机译:基于Zernike时刻的特征的数字基底图像监督血管分割技术

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This paper proposes a new supervised method for blood vessel segmentation using Zernike moment-based shape descriptors. The method implements a pixel wise classification by computing a 11-D feature vector comprising of both statistical (gray-level) features and shape-based (Zernike moment) features. Also the feature set contains optimal coefficients of the Zernike Moments which were derived based on the maximum differentiability between the blood vessel and background pixels. A manually selected training points obtained from the training set of the DRIVE dataset, covering all possible manifestations were used for training the ANN-based binary classifier. The method was evaluated on unknown test samples of DRIVE and STARE databases and returned accuracies of 0.945 and 0.9486 respectively, outperforming other existing supervised learning methods. Further, the segmented outputs were able to cover thinner blood vessels better than previous methods, aiding in early detection of pathologies.
机译:本文提出了一种利用Zernike Slip-Comment描述符进行血管分割的新监督方法。 该方法通过计算包括统计(灰度级)特征和基于形状的(Zernike时刻)特征的11-D特征向量来实现像素明智的分类。 特征集还包含基于血管和背景像素之间的最大可分性导出的Zernike矩的最佳系数。 从驱动数据集的训练集获得的手动选择的培训点,涵盖了所有可能的表现形式用于训练基于ANN的二进制分类器。 该方法是在驱动和凝视数据库的未知测试样本上进行评估,分别返回0.945和0.9486的精度,优于其他现有的监督学习方法。 此外,分段输出能够比以前的方法更好地覆盖较薄的血管,助攻在早期检测病理学中。

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