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基于特征选择的有监督视网膜血管动静脉分类

Supervised Vessels Classification Based on Feature Selection

  • 摘要: 视网膜血管的动静脉分类对于高血压性视网膜病变和中风等心血管疾病的自动检测是很重要的。在本文中,我们提出了一种全自动的脉静脉分类(AVC)方法,重点在于对血管中心线像素的特征提取和选择。首先,在血管分割和视盘(OD)定位的后提取血管中心线。然后,在OD附近提取感兴趣区域(ROI),并且提取ROI区域内中心线像素的局部特征,灰度共生矩阵(GLCM)特征和自适应局部二进制模式(A-LBP)特征。然后,通过使用最大相关性和最小冗余(mRMR)算法进行特征选择。最后,使用特征加权k最近邻(FW-KNN)算法对动静脉血管进行分类。DRIVE数据库和INSPIRE-AVR数据库的实验结果分别达到了88.65%和88.51%的高精度。

     

    Abstract: Arterial-venous classification of retinal blood vessels is important for the automatic detection of cardiovascular diseases such as hypertensive retinopathy and stroke. In this paper, we propose an arterial-venous classification (AVC) method, which focuses on feature extraction and selection from vessel centerline pixels. The vessel centerline is extracted after the preprocessing of vessel segmentation and optic disc (OD) localization. Then, a region of interest (ROI) is extracted around OD, and the most efficient features of each centerline pixel in ROI are selected from the local features, grey-level co-occurrence matrix (GLCM) features, and an adaptive local binary patten (A-LBP) feature by using a max-relevance and min-redundancy (mRMR) scheme. Finally, a feature-weighted K-nearest neighbor (FW-KNN) algorithm is used to classify the arterial-venous vessels. The experimental results on the DRIVE database and INSPIRE-AVR database achieve the high accuracy of 88.65% and 88.51% in ROI, respectively.

     

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