Machine Vision Lab., Ferdowsi University of Mashhad, Mashhad, Iran.
Comput Methods Programs Biomed. 2015 Mar;118(3):263-79. doi: 10.1016/j.cmpb.2015.01.004. Epub 2015 Feb 7.
Detection and quantitative measurement of variations in the retinal blood vessels can help diagnose several diseases including diabetic retinopathy. Intrinsic characteristics of abnormal retinal images make blood vessel detection difficult. The major problem with traditional vessel segmentation algorithms is producing false positive vessels in the presence of diabetic retinopathy lesions. To overcome this problem, a novel scheme for extracting retinal blood vessels based on morphological component analysis (MCA) algorithm is presented in this paper. MCA was developed based on sparse representation of signals. This algorithm assumes that each signal is a linear combination of several morphologically distinct components. In the proposed method, the MCA algorithm with appropriate transforms is adopted to separate vessels and lesions from each other. Afterwards, the Morlet Wavelet Transform is applied to enhance the retinal vessels. The final vessel map is obtained by adaptive thresholding. The performance of the proposed method is measured on the publicly available DRIVE and STARE datasets and compared with several state-of-the-art methods. An accuracy of 0.9523 and 0.9590 has been respectively achieved on the DRIVE and STARE datasets, which are not only greater than most methods, but are also superior to the second human observer's performance. The results show that the proposed method can achieve improved detection in abnormal retinal images and decrease false positive vessels in pathological regions compared to other methods. Also, the robustness of the method in the presence of noise is shown via experimental result.
视网膜血管的检测和定量测量有助于诊断多种疾病,包括糖尿病性视网膜病变。异常视网膜图像的固有特征使得血管检测变得困难。传统血管分割算法的主要问题是在存在糖尿病性视网膜病变病变的情况下产生假阳性血管。为了克服这个问题,本文提出了一种基于形态成分分析(MCA)算法的提取视网膜血管的新方案。MCA 是基于信号的稀疏表示开发的。该算法假设每个信号都是几个形态上不同的分量的线性组合。在提出的方法中,采用适当变换的 MCA 算法将血管和病变彼此分离。然后,应用 Morlet 小波变换来增强视网膜血管。通过自适应阈值处理获得最终的血管图。该方法的性能在公开的 DRIVE 和 STARE 数据集上进行了测量,并与几种最先进的方法进行了比较。在 DRIVE 和 STARE 数据集上分别实现了 0.9523 和 0.9590 的准确度,不仅优于大多数方法,而且优于第二位人类观察者的性能。结果表明,与其他方法相比,该方法可以在异常视网膜图像中实现更好的检测,并减少病变区域中的假阳性血管。此外,通过实验结果还展示了该方法在存在噪声时的稳健性。