用集成分类器检测视网膜图像中的微动脉瘤

M. Habib, R. Welikala, A. Hoppe, C. Owen, A. Rudnicka, S. Barman
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引用次数: 17

摘要

糖尿病视网膜病变(DR)是导致劳动年龄人群失明的主要原因之一。视网膜图像中微动脉瘤(MA)的存在是dr的一个病理征象。在这项工作中,我们提出了一种新的算法组合,应用于一个公共数据集,用于自动检测视网膜彩色眼底图像中的MA。该技术首先使用高斯匹配滤波器检测初始候选集,然后对初始候选集进行分类,以减少误报的数量。随机森林集成分类器使用一组79个特征(文献中最常用的特征)进行分类。我们提出的算法在MESSIDOR数据集的20张图像子集上进行了评估。我们表明,与使用其他技术中提出的k近邻分类器相比,使用具有79个特征的随机森林分类器提高了检测的灵敏度。此外,随机森林能够根据它们的重要性对特征进行排序。我们根据其重要性对79个特征进行了排名。这个排名提供了对区分真正的MA候选对象和虚假对象所必需的最重要特征的见解。离心率、纵横比和弯矩是其中的重要特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Microaneurysm detection in retinal images using an ensemble classifier
Diabetic Retinopathy (DR) is one of the leading causes of blindness amongst the working age population. The presence of microaneurysms (MA) in retinal images is a pathognomonic sign of DR. In this work we have presented a novel combination of algorithms applied to a public dataset for automated detection of MA in colour fundus images of the retina. The proposed technique first detects an initial set of candidates using a Gaussian Matched filter and then classifies the initial set of candidates in order to reduce the number of false positives. A Random Forest ensemble classifier using a set of 79 features (the most common features used within literature) was used for classification. Our proposed algorithm was evaluated on a subset of 20 images from the MESSIDOR dataset. We show that the use of the Random Forest classifier with the 79 features improves the sensitivity of the detection, compared to using a K-Nearest Neighbours classifier that has been proposed in other techniques. In addition, the Random Forest is capable of ranking features according to their importance. We have ranked the 79 features according to their importance. This ranking provides an insight into the most important features that are necessary for discriminating true MA candidates from spurious objects. Eccentricity, aspect ratio and moments are found to be among the important features.
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