Evaluation of LBP Variants in Retinal Blood Vessels Segmentation Using Machine Learning

E. Badeka, Cristina I. Papadopoulou, G. Papakostas
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引用次数: 7

Abstract

In this paper, the problem of retinal image segmentation is examined. The segmentation task is handled as a binary classification problem and it is solved by applying handcrafted texture features and traditional machine learning models. In this context, the paper studies the segmentation performance of the Local Binary Pattern (LBP) texture descriptor and nine of its variants. For the needs of the evaluation, a segmentation methodology and a corresponding experimental protocol is proposed, which are applied along with a benchmark retinal image dataset. The simulation results revealed that not all the LBP variants are appropriate for accurate extraction of the retinal arteries/veins morphology. The derived segmentation accuracy varies between 78%-91% (Support Vector Machine- SVM), S6%-92% (Decision Tree-DT), and 84%-92% (k-Nearest Neighbors - k-NN), with the Extended LBP (E-LBP) being the most informative descriptor.
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利用机器学习评估视网膜血管分割中的LBP变异
本文研究了视网膜图像分割问题。分割任务作为一个二元分类问题来处理,并通过应用手工纹理特征和传统的机器学习模型来解决。在此背景下,本文研究了局部二值模式(LBP)纹理描述符及其9种变体的分割性能。针对评估的需要,提出了一种分割方法和相应的实验方案,并结合基准视网膜图像数据集进行了应用。仿真结果表明,并非所有LBP变体都适合于准确提取视网膜动静脉形态。衍生的分割精度在78%-91%(支持向量机- SVM), S6%-92%(决策树- dt)和84%-92% (k-近邻- k-NN)之间变化,其中扩展LBP (E-LBP)是最具信息量的描述符。
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