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Optic Cup segmentation from retinal fundus images using Glowworm Swarm Optimization for glaucoma detection

机译:使用萤石群优化的旋视基底图像对青光眼检测的光学杯分割

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Glaucoma is one of the diseases that damages the optic nerve of the eye and can result in permanent vision loss. Hence, it becomes essential to detect the disorder at an early stage. Optic cup segmentation from retinal fundus images is an important step for automated glaucoma diagnosis. In this paper, we have presented Glowworm Swarm Optimization algorithm that helps in automated detection of optic cup from retinal fundus images. The glowworms as agents help in the construction of the solutions by making use of the intensity gradient inside the cup region. The exploration capability of glowworms is derived from the adaptive neighbourhood behaviour, thereby making them capable of detecting optic cup region accurately, even in images having weak cup boundaries or low contrast. The proposed algorithm has been implemented and evaluated on RIM-ONE, DRIVE, STARE, DRIONS-DB and DIARETDB1 datasets for qualitative and quantitative analysis. The average overlapping error obtained is 22.1% for DRIONS-DB Database which is minimum as compared to other approaches namely thresholding based, Ellipse fitting and Ant Colony optimization algorithm. (C) 2020 Elsevier Ltd. All rights reserved.
机译:青光眼是损害眼睛的视神经的疾病之一,可以导致永久视力丧失。因此,在早期检测疾病是必要的。视网膜眼底图像的光学杯分割是自动青光眼诊断的重要步骤。在本文中,我们提出了萤火虫群优化算法,有助于视网膜眼底图像自动检测光学杯。作为代理的萤火虫通过利用杯区内的强度梯度有助于建造解决方案。萤鱼的勘探能力来自自适应邻域行为,从而使它们能够精确地检测光学杯区域,即使在具有弱杯边界或低对比度的图像中也是如此。已经在RIM-ONE,驱动器,凝视,驱动器-DB和DiaRetdB1数据集上实现和评估了该算法,用于定性和定量分析。获得的平均重叠误差为DRIONS-DB数据库的22.1%,与其他方法相比,其最小是基于阈值拟合和蚁群优化算法的最小。 (c)2020 elestvier有限公司保留所有权利。

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