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SDCA: a novel stack deep convolutional autoencoder – an application on retinal image denoising

机译:SDCA:一种新颖的堆栈深度卷积自动编码器–在视网膜图像去噪中的应用

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摘要

Retinal fundus images are used for the diagnosis and treatment of various eye diseases such as diabetic retinopathy, glaucoma, exudates and so on. The retinal vasculature is difficult to investigate retinal conditions due to the presence of various noises in the retinal image during the capture of the image. Removal of noise is an important aspect for better visibility and diagnosis of the noisy fundus in ophthalmology. This study represents a deep learning based approach to denoising images and restoring features using stack denoising convolutional autoencoder. The proposed scheme is implemented to restore the structural details of fundus as well as to decrease the noise level. Furthermore, the proposed model utilises shared layers with the optimal manner to reduce the noise level of the target image with minimal computational cost. To restore an image, the proposed model brings a patched base training on samples to suppress with one to one manner without any loss of information. To access the denoising effect of the proposed scheme, several standard fundus databases such as DRIVE, STARE and DIARETDB1 have been tested in this study. Comparing the efficiency of the suggested model with state-of-art methods, the proposed scheme gives better result in terms of qualitative and quantitative analysis.
机译:视网膜眼底图像用于诊断和治疗各种眼部疾病,例如糖尿病性视网膜病,青光眼,渗出液等。由于在捕获图像期间视网膜图像中存在各种噪声,因此视网膜脉管系统难以研究视网膜状况。消除噪音是改善眼科嘈杂眼底的可见度和诊断的重要方面。这项研究代表了一种基于深度学习的方法,该方法使用堆栈降噪卷积自动编码器对图像进行降噪和还原特征。所提出的方案被实施以恢复眼底的结构细节并降低噪声水平。此外,所提出的模型以最佳方式利用共享层以最小的计算成本来降低目标图像的噪声水平。为了恢复图像,提出的模型对样本进行了修补的基础训练,以一对一的方式进行抑制,而不会丢失任何信息。为了获得所提出方案的去噪效果,本研究中测试了几个标准眼底数据库,例如DRIVE,STARE和DIARETDB1。将建议的模型的效率与最新方法进行比较,从定性和定量分析的角度来看,该方案给出了更好的结果。

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