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Optic Disc and Optic Cup Segmentation for Glaucoma Detection from Blur Retinal Images Using Improved Mask-RCNN

机译:使用改进的面罩 - RCNN从模糊视网膜图像检测光盘和光学杯分割

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Glaucoma is a fatal eye disease that harms the optic disc (OD) and optic cup (OC) and results into blindness in progressed phases. Because of slow progress, the disease exhibits a small number of symptoms in the initial stages, therefore causing the disease identification to be a complicated task. So, a fully automatic framework is mandatory, which can support the screening process and increase the chances of disease detection in the early stages. In this paper, we deal with the localization and segmentation of the OD and OC for glaucoma detection from blur retinal images. We have presented a novel method that is Densenet-77-based Mask-RCNN to overcome the challenges of the glaucoma detection. Initially, we have performed the data augmentation step together with adding blurriness in samples to increase the diversity of data. Then, we have generated the annotations from ground-truth (GT) images. After that, the Densenet-77 framework is employed at the feature extraction level of Mask-RCNN to compute the deep key points. Finally, the calculated features are used to localize and segment the OD and OC by the custom Mask-RCNN model. For performance evaluation, we have used the ORIGA dataset that is publicly available. Furthermore, we have performed cross-dataset validation on the HRF database to show the robustness of the presented framework. The presented framework has achieved an average precision, recall, F -measure, and IOU as 0.965, 0.963, 0.97, and 0.972, respectively. The proposed method achieved remarkable performance in terms of both efficiency and effectiveness as compared to the latest techniques under the presence of blurring, noise, and light variations.
机译:青光眼是一种致命的眼部疾病,损害了光盘(OD)和光学杯(OC)并导致进展阶段的失明。由于进展缓慢,疾病在初始阶段表现出少数症状,因此导致疾病识别是一个复杂的任务。因此,强制性框架是强制性的,这可以支持筛查过程,并增加早期阶段中疾病检测的机会。在本文中,我们处理OD和OC的本地化和分割,用于从模糊图像中进行青光眼检测。我们介绍了一种新的方法,即Densenet-77的面膜-RCNN,以克服青光眼检测的挑战。最初,我们使用样本中添加模糊性来执行数据增强步骤,以增加数据的多样性。然后,我们已经从地面真实(GT)图像中生成了注释。之后,在掩模-RCNN的特征提取水平上采用DenSenet-77框架以计算深键点。最后,计算出的功能用于通过自定义掩码-RCNN模型本地化和分段OD和OC。对于性能评估,我们使用了公开可用的Origa DataSet。此外,我们在HRF数据库上执行了跨数据集验证,以显示所提出的框架的稳健性。本框架已达到平均精度,召回,F展示,IOO分别为0.965,0.963,0.97和0.972。与在存在模糊,噪声和光变化的存在下的最新技术相比,所提出的方法在效率和有效性方面取得了显着性能。

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