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EXTRACTION AND RECONSTRUCTION OF RETINAL VASCULATURE FOR DIABETIC RETINOPATHY

机译:视网膜脉管系统的提取与重建糖尿病视网膜病变

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Information of retinal vasculature morphology is being used in grading the severity and progression of diabetic retinopathy. An image analysis system can assist ophthalmologist make accurate diagnosis in an efficient manner. In this paper, the development of an image processing algorithm for detecting and reconstructing of retinal vasculature is presented. The detection of the vascular structure is achieved by image enhancement using contrast limited adaptive histogram equalization followed by the extraction of the vessels using Bottom-hat morphological transformation. For reconstruction of the complete retinal vasculature, a region growing technique based on first-order Gaussian derivative is developed. The technique incorporates both gradient magnitude change and average intensity as the homogeneity criteria that enable the process to adapt to intensity changes and intensity spread over the vasculature region. The reconstruction technique reduces the required number of seeds to near optimal for the region growing process. It also overcomes poor performance of current seed-based methods especially in low and inconsistent contrast images as normally seen in vasculature regions of fundus images. Simulations of the algorithm on 20 test images from the DRIVE database shows that it outperforms many other published methods and achieved an accuracy (ability to detect both vessel and non-vessel pixels) range of 0.91-0.95, a sensitivity (ability to detect vessel pixels) range of 0.91-0.95 and a specificity (ability to detect non-vessel pixels) range of 0.88-0.94.
机译:视网膜血管系统形态的信息用于评分糖尿病视网膜病变的严重程度和进展。图像分析系统可以帮助眼科医生以有效的方式进行准确的诊断。本文介绍了视网膜脉管系统检测和重建的图像处理算法的发展。通过使用对比度有限的自适应直方图均衡,通过图像增强来实现血管结构的检测,然后使用底帽形态转化提取血管。为了重建完全视网膜脉管系统,开发了一种基于一阶高斯衍生物的区域生长技术。该技术包括梯度幅度变化和平均强度作为均匀性标准,使得能够适应强度变化和强度在脉管系统区域上传播的过程。重建技术将所需数量的种子减少到近最佳地区生长过程的最佳种子。它还克服了当前基于种子的方法的性能差,尤其是在眼底图像的脉管系统区域中通常看到的低和不一致的对比图像。从驱动数据库20个示出了测试图像的算法的仿真,它优于许多其它的公开的方法和实现的精度(能够检测两个容器和非血管像素)范围的0.91-0.95,灵敏度(检测容器像素的能力)范围为0.91-0.95和特异性(检测非血管像素的能力)范围为0.88-0.94。

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