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首页> 外文期刊>Journal of computer sciences >Optic Disc Segmentation in Fundus Images with Deep Learning Object Detector
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Optic Disc Segmentation in Fundus Images with Deep Learning Object Detector

机译:深度学习对象探测器的眼底图像中的光学光盘分割

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摘要

The Optic Disc (OD) is an important anatomical landmark in the fundus image to diagnose a myriad of diseases, such as glaucoma and Diabetic Retinopathy (DR) and to locate structures such as the macula and the main vascular arcade. However, locating and segmenting the OD are not easy tasks. Previous methods have employed a deep Convolutional Neural Network (CNN) without any need for hand-crafted features. Among these methods, RetinaNet has recently attracted attention as a simple one-stage object detector that performs quickly and efficiently while achieving state-of-the-art results. RetinaNet has proven its efficiency in multiple conventional object detection tasks with a larger training set that contains a sufficient number of diverse cases which are beyond reach in medical tasks. Thus, we propose an OD segmentation model from fundus images based on RetinaNet extension with DenseNet that addresses the vanishing gradient problem, enhances feature propagation, performs deep supervision, strengthens feature reuse and reduces the number of parameters. The experimental results using three publicly available databases show the efficacy of deep object detection network and the dense connectivity when applied to fundus images, which is a promising step in providing a segmentation to detect patients in the early stages of the disease.
机译:光盘(OD)是眼底图像中的重要解剖标志,以诊断无数疾病,例如青光眼和糖尿病视网膜病变(DR),并定位诸如黄斑和主要血管拱道等结构。但是,定位和分割OD不容易任务。以前的方法已经采用了深度卷积神经网络(CNN),而无需任何需要手工制作的功能。在这些方法中,RetinAnet最近引起了注意力作为一种简单的一级物体检测器,其在实现最先进的结果的同时快速有效地执行。 RetinAnet在具有更大训练集中的多种常规对象检测任务中证明了其效率,其中包含足够数量的多样化案例,这些情况超出了医疗任务。因此,我们提出了基于Retinanet扩展的基本图像的OD分段模型,DenSenet解决了消失的梯度问题,增强了特征传播,执行深度监督,增强功能重用并减少参数的数量。使用三个公开数据库的实验结果显示了深度物体检测网络的功效和应用于眼底图像时的致密连接,这是提供分段以检测疾病早期阶段的患者的一步。

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