高级检索
朱承璋, 向遥, 邹北骥, 高旭, 梁毅雄, 毕佳. 基于分类回归树和AdaBoost的眼底图像视网膜血管分割[J]. 计算机辅助设计与图形学学报, 2014, 26(3): 445-451.
引用本文: 朱承璋, 向遥, 邹北骥, 高旭, 梁毅雄, 毕佳. 基于分类回归树和AdaBoost的眼底图像视网膜血管分割[J]. 计算机辅助设计与图形学学报, 2014, 26(3): 445-451.
Zhu Chengzhang, Xiang Yao, Zou Beiji, Gao Xu, Liang Yixiong, Bi Jia. Retinal Vessel Segmentation in Fundus Images Using CART and AdaBoost[J]. Journal of Computer-Aided Design & Computer Graphics, 2014, 26(3): 445-451.
Citation: Zhu Chengzhang, Xiang Yao, Zou Beiji, Gao Xu, Liang Yixiong, Bi Jia. Retinal Vessel Segmentation in Fundus Images Using CART and AdaBoost[J]. Journal of Computer-Aided Design & Computer Graphics, 2014, 26(3): 445-451.

基于分类回归树和AdaBoost的眼底图像视网膜血管分割

Retinal Vessel Segmentation in Fundus Images Using CART and AdaBoost

  • 摘要: 提出一种能有效分割眼底图像中视网膜血管的监督学习方法, 为眼底图中的每个像素点构造一个包括局部特征、形态学特征和Gabor特征在内的39维特征向量, 用以判定其是否为血管上的像素.在进行分类计算时, 以分类回归树作为弱分类器对样本集分类, 然后对AdaBoost分类器进行训练得到强分类器, 并由此完成各个像素点的分类判定.基于国际公共数据库DRIVE的实验结果表明, 该方法的平均精确度达到0.960 7, 且敏感度和特异性均优于已有的基于监督学习的方法, 适用于眼底图像的计算机辅助定量分析和疾病诊断.

     

    Abstract: It is proposed an effective method based on supervised learning for retinal vessel segmentation in fundus images.To determine whether a pixel is in the vessel, a 39-dimensional feature vector is extracted for every pixel, consisting of local features, morphological features and Gabor features.Afterwards, the sampled set is first treated by the classification and regression tree (CART) as a weak classifier, and then strengthened by a trained AdaBoost-based classifier as a strong classifier, to classify the pixels.The proposed method is evaluated with the public digital retinal images for vessel extraction (DRIVE) set and experimental results show that the proposed method has a high average accuracy of 0.9607and performs better than other approaches based on supervised learning in sensitivity and specificity.It is suitable for computer-aided eye disease diagnosis and evaluation using fundus images.

     

/

返回文章
返回