Oliveira Wendeson S, Teixeira Joyce Vitor, Ren Tsang Ing, Cavalcanti George D C, Sijbers Jan
Centro de Informática, Universidade Federal de Pernambuco, Recife, PE, Brazil.
iMinds - Vision Lab, Department of Physics, University of Antwerp, Wilrijk, Belgium.
PLoS One. 2016 Feb 26;11(2):e0149943. doi: 10.1371/journal.pone.0149943. eCollection 2016.
Image segmentation of retinal blood vessels is a process that can help to predict and diagnose cardiovascular related diseases, such as hypertension and diabetes, which are known to affect the retinal blood vessels' appearance. This work proposes an unsupervised method for the segmentation of retinal vessels images using a combined matched filter, Frangi's filter and Gabor Wavelet filter to enhance the images. The combination of these three filters in order to improve the segmentation is the main motivation of this work. We investigate two approaches to perform the filter combination: weighted mean and median ranking. Segmentation methods are tested after the vessel enhancement. Enhanced images with median ranking are segmented using a simple threshold criterion. Two segmentation procedures are applied when considering enhanced retinal images using the weighted mean approach. The first method is based on deformable models and the second uses fuzzy C-means for the image segmentation. The procedure is evaluated using two public image databases, Drive and Stare. The experimental results demonstrate that the proposed methods perform well for vessel segmentation in comparison with state-of-the-art methods.
视网膜血管的图像分割是一个有助于预测和诊断心血管相关疾病(如高血压和糖尿病)的过程,已知这些疾病会影响视网膜血管的外观。这项工作提出了一种无监督方法,用于使用组合匹配滤波器、Frangi滤波器和Gabor小波滤波器对视网膜血管图像进行分割,以增强图像。这三种滤波器的组合以改善分割是这项工作的主要动机。我们研究了两种执行滤波器组合的方法:加权均值和中位数排序。在血管增强后测试分割方法。使用简单阈值标准对具有中位数排序的增强图像进行分割。在考虑使用加权均值方法增强的视网膜图像时,应用两种分割程序。第一种方法基于可变形模型,第二种方法使用模糊C均值进行图像分割。使用两个公共图像数据库Drive和Stare对该程序进行评估。实验结果表明,与现有方法相比,所提出的方法在血管分割方面表现良好。