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Intelligent Image Processing System for Detection and Segmentation of Regions of Interest in Retinal Images

机译:用于检测和分割视网膜图像中感兴趣区域的智能图像处理系统

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The automatic detection, segmentation, localization, and evaluation of the optic disc, macula, exudates, and hemorrhages are very important for diagnosing retinal diseases. One of the difficulties in detecting such regions of interest (RoIs) with computer vision is their symmetries, e.g., between the optic disc and exudates and also between exudates and hemorrhages. This paper proposes an original, intelligent, and high-performing image processing system for the simultaneous detection and segmentation of retinal RoIs. The basic principles of the method are image decomposition in small boxes and local texture analysis. The processing flow contains three phases: preprocessing, learning, and operating. As a first novelty, we propose proper feature selection based on statistical analysis in confusion matrices for different feature types (extracted from a co-occurrence matrix, fractal type, and local binary patterns). Mainly, the selected features are chosen to differentiate between similar RoIs. The second novelty consists of local classifier fusion. To this end, the local classifiers associated with features are grouped in global classifiers corresponding to the RoIs. The local classifiers are based on minimum distances to the representatives of classes and the global classifiers are based on confidence intervals, weights, and a voting scheme. A deep convolutional neural network, based on supervised learning, for blood vessel segmentation is proposed in order to improve the RoI detection performance. Finally, the experimental results on real images from different databases demonstrate the rightness of our methodologies and algorithms.
机译:视盘,黄斑,渗出液和出血的自动检测,分割,定位和评估对于诊断视网膜疾病非常重要。用计算机视觉检测这样的感兴趣区域(RoI)的困难之一是它们的对称性,例如,在视盘和渗出液之间以及在渗出液和出血之间的对称性。本文提出了一种新颖,智能,高性能的图像处理系统,用于同时检测和分割视网膜RoI。该方法的基本原理是小盒子中的图像分解和局部纹理分析。处理流程包含三个阶段:预处理,学习和操作。作为第一个新颖性,我们基于统计分析在不同特征类型(从同现矩阵,分形类型和局部二进制模式中提取)的混淆矩阵中提出了适当的特征选择。主要地,选择所选特征以区分相似的ROI。第二个新奇之处在于局部分类器融合。为此,与特征相关联的局部分类器被分组在与RoI相对应的全局分类器中。局部分类器基于与类代表的最小距离,全局分类器基于置信区间,权重和投票方案。提出了一种基于监督学习的深度卷积神经网络,用于血管分割,以提高RoI检测性能。最后,来自不同数据库的真实图像的实验结果证明了我们的方法和算法的正确性。

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