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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >An efficient multistage segmentation method for accurate hard exudates and lesion detection in digital retinal images
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An efficient multistage segmentation method for accurate hard exudates and lesion detection in digital retinal images

机译:一种高效的多级分段方法,用于在数字视网膜图像中精确渗出物和病变检测

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摘要

Digital retinal images are commonly used for hard exudates and lesion detection. An efficient segmentation method is needed to detect and discern the lesions from the retinal area. In this paper, a hybrid method is presented for digital retinal image processing for diagnosis and screening purposes. The goal of this research is to suggest a supervised/semi supervised approach for exudates detection in fundus images and it is also to investigate a technique to find the optimum structure. The image is first transformed into fuzzy domain after an initialization. A cellular learning automata model is used to detect any abnormality on the image which is related to a lesion. The automaton is created with an extra term as the rule updating term to increase the flexibility and capability of the cellular automata. The selection and updating of rule are implemented automatically We also performed allocating the score and penalty value for the cells toward the process of segmentation Three main statistical criteria are introduced as the sensitivity, specificity and accuracy. A number of 50 retinal images with visually detection hard exudates and lesions are the experimental dataset for evaluation and validation of the method. For STARE retina image dataset, for a neighborhood of 5 x 5, score of theta = 0.01, penalty of xi = 0.01, ratio of state overall variation in three sequential cycles in cellular automata (eta) over bar = 0.5, updating additive value sigma = 0.02 & rule selection threshold value rho = 0.8 the mean value of statistical criteria averaged over all dataset can reach 99% which is an outstanding assessment result for the proposed method.
机译:数字视网膜图像通常用于硬渗滤物和病变检测。需要一种有效的分段方法来检测和辨别来自视网膜区域的病变。本文介绍了用于诊断和筛选目的的数字视网膜图像处理的混合方法。本研究的目标是提出一种监督/半监督方法,用于在眼底图像中进行渗出物检测,并且还研究了一种找到最佳结构的技术。在初始化之后,首先将图像转换为模糊域。蜂窝学习自动机模型用于检测与病变相关的图像上的任何异常。根据规则更新术语创建自动机,以提高蜂窝自动机的灵活性和能力。规则的选择和更新是自动实现的,我们还执行为细分的分数和惩罚朝向分割过程进行分配三个主要统计标准作为灵敏度,特异性和准确性引入。具有视觉检测硬渗滤物和病变的多种视网膜图像是用于评估和验证方法的实验数据集。对于凝视视网膜图像数据集,对于5 x 5的附近,Theta的得分= 0.01,xi = 0.01的惩罚,蜂窝自动机(ETA)中三个顺序周期的状态变化的总体变化= 0.5,更新添加剂值Sigma = 0.02和规则选择阈值Rho = 0.8在所有数据集上平均平均的平均值可以达到99%,这是该方法的出色评估结果。

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