Fully Convolutional Network and Visual Saliency-Based Automatic Optic Disc Detection in Retinal Fundus Images

We present in this paper a novel optic disc detection method based on a fully convolutional network and visual saliency in retinal fundus images. Firstly, we employ the morphological reconstruction-based object detection method to locate the optic disc region roughly. According to the location resul...

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Main Authors: Xiaosheng Yu, Ying Wang, Siqi Wang, Nan Hu
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Journal of Healthcare Engineering
Online Access:http://dx.doi.org/10.1155/2021/3561134
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spelling doaj-3d1f9ccf876540ee96329eb54dc459632021-09-13T01:23:15ZengHindawi LimitedJournal of Healthcare Engineering2040-23092021-01-01202110.1155/2021/3561134Fully Convolutional Network and Visual Saliency-Based Automatic Optic Disc Detection in Retinal Fundus ImagesXiaosheng Yu0Ying Wang1Siqi Wang2Nan Hu3Faculty of Robot Science and EngineeringCollege of Information Science and EngineeringCollege of Information Science and EngineeringSchool of Information and Control EngineeringWe present in this paper a novel optic disc detection method based on a fully convolutional network and visual saliency in retinal fundus images. Firstly, we employ the morphological reconstruction-based object detection method to locate the optic disc region roughly. According to the location result, a 400 × 400 image patch that covers the whole optic disc is obtained by cropping the original retinal fundus image. Secondly, the Simple Linear Iterative Cluster approach is utilized to segment such an image patch into many smaller superpixels. Thirdly, each superpixel is assigned a uniform initial saliency value according to the background prior information based on the assumption that the superpixels located on the boundary of the image belong to the background. Meanwhile, we use a pretrained fully convolutional network to extract the deep features from different layers of the network and design the strategy to represent each superpixel by the deep features. Finally, both the background prior information and the deep features are integrated into the single-layer cellular automata framework to gain the accurate optic disc detection result. We utilize the DRISHTI-GS dataset and RIM-ONE r3 dataset to evaluate the performance of our method. The experimental results demonstrate that the proposed method can overcome the influence of intensity inhomogeneity, weak contrast, and the complex surroundings of the optic disc effectively and has superior performance in terms of accuracy and robustness.http://dx.doi.org/10.1155/2021/3561134
collection DOAJ
language English
format Article
sources DOAJ
author Xiaosheng Yu
Ying Wang
Siqi Wang
Nan Hu
spellingShingle Xiaosheng Yu
Ying Wang
Siqi Wang
Nan Hu
Fully Convolutional Network and Visual Saliency-Based Automatic Optic Disc Detection in Retinal Fundus Images
Journal of Healthcare Engineering
author_facet Xiaosheng Yu
Ying Wang
Siqi Wang
Nan Hu
author_sort Xiaosheng Yu
title Fully Convolutional Network and Visual Saliency-Based Automatic Optic Disc Detection in Retinal Fundus Images
title_short Fully Convolutional Network and Visual Saliency-Based Automatic Optic Disc Detection in Retinal Fundus Images
title_full Fully Convolutional Network and Visual Saliency-Based Automatic Optic Disc Detection in Retinal Fundus Images
title_fullStr Fully Convolutional Network and Visual Saliency-Based Automatic Optic Disc Detection in Retinal Fundus Images
title_full_unstemmed Fully Convolutional Network and Visual Saliency-Based Automatic Optic Disc Detection in Retinal Fundus Images
title_sort fully convolutional network and visual saliency-based automatic optic disc detection in retinal fundus images
publisher Hindawi Limited
series Journal of Healthcare Engineering
issn 2040-2309
publishDate 2021-01-01
description We present in this paper a novel optic disc detection method based on a fully convolutional network and visual saliency in retinal fundus images. Firstly, we employ the morphological reconstruction-based object detection method to locate the optic disc region roughly. According to the location result, a 400 × 400 image patch that covers the whole optic disc is obtained by cropping the original retinal fundus image. Secondly, the Simple Linear Iterative Cluster approach is utilized to segment such an image patch into many smaller superpixels. Thirdly, each superpixel is assigned a uniform initial saliency value according to the background prior information based on the assumption that the superpixels located on the boundary of the image belong to the background. Meanwhile, we use a pretrained fully convolutional network to extract the deep features from different layers of the network and design the strategy to represent each superpixel by the deep features. Finally, both the background prior information and the deep features are integrated into the single-layer cellular automata framework to gain the accurate optic disc detection result. We utilize the DRISHTI-GS dataset and RIM-ONE r3 dataset to evaluate the performance of our method. The experimental results demonstrate that the proposed method can overcome the influence of intensity inhomogeneity, weak contrast, and the complex surroundings of the optic disc effectively and has superior performance in terms of accuracy and robustness.
url http://dx.doi.org/10.1155/2021/3561134
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AT yingwang fullyconvolutionalnetworkandvisualsaliencybasedautomaticopticdiscdetectioninretinalfundusimages
AT siqiwang fullyconvolutionalnetworkandvisualsaliencybasedautomaticopticdiscdetectioninretinalfundusimages
AT nanhu fullyconvolutionalnetworkandvisualsaliencybasedautomaticopticdiscdetectioninretinalfundusimages
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