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Analysis of Vasculature in Human Retinal Images Using Particle Swarm Optimization Based Tsallis Multi-level Thresholding and Similarity Measures

机译:基于粒子群优化的TSAllis多级阈值和相似度测量分析人类视网膜图像中的脉管系统

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Retinal vasculature of the human circulatory system which can be visualized directly provides a number of systemic conditions and can be diagnosed by the detection of lesions. Changes in these structures are found to be correlated with pathological conditions and provide information on severity or state of various diseases. In this work, particle swarm optimization algorithm based multilevel thresholding is adopted for detecting the vasculature structures in retinal fundus images. Initially, adaptive histogram equalization is used for pre-processing of the original images. Tsallis multilevel thresholding is used for the segmentation of the blood vessels. Further, similarity measures are used to quantify the similarity between the segmented result and the corresponding ground truth. The optimal multi-threshold selection using particle swarm optimization seems to provide better results. Similarity measures analysis using dendrogram and box plot provide validation of the segmentation procedure attempted.
机译:可以可视化的人循环系统的视网膜脉管系统直接提供许多全身状况,并且可以通过检测病变来诊断。发现这些结构的变化与病理条件相关,并提供有关各种疾病的严重程度或状态的信息。在这项工作中,采用基于粒子群优化算法的多级阈值阈值,用于检测视网膜眼底图像中的脉管系统结构。最初,自适应直方图均衡用于预处理原始图像。 Tsallis多级阈值阈值用于血管的分割。此外,相似度测量用于量化分段结果与相应的地面真理之间的相似性。使用粒子群优化的最佳多阈值选择似乎提供了更好的结果。相似度测量使用Dendrogram和Box Plot分析提供了试图的分割过程的验证。

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