Abstract

The automatic detection, segmentation, localization, and evaluation of the optic disc, macula, exudates, and hemorrhages are very important for diagnosing retinal diseases. One of the difficulties in detecting such regions of interest (RoIs) with computer vision is their symmetries, e.g., between the optic disc and exudates and also between exudates and hemorrhages. This paper proposes an original, intelligent, and high-performing image processing system for the simultaneous detection and segmentation of retinal RoIs. The basic principles of the method are image decomposition in small boxes and local texture analysis. The processing flow contains three phases: preprocessing, learning, and operating. As a first novelty, we propose proper feature selection based on statistical analysis in confusion matrices for different feature types (extracted from a co-occurrence matrix, fractal type, and local binary patterns). Mainly, the selected features are chosen to differentiate between similar RoIs. The second novelty consists of local classifier fusion. To this end, the local classifiers associated with features are grouped in global classifiers corresponding to the RoIs. The local classifiers are based on minimum distances to the representatives of classes and the global classifiers are based on confidence intervals, weights, and a voting scheme. A deep convolutional neural network, based on supervised learning, for blood vessel segmentation is proposed in order to improve the RoI detection performance. Finally, the experimental results on real images from different databases demonstrate the rightness of our methodologies and algorithms.

Highlights

  • Eye disorders can lead partial or even total loss of vision, significantly affecting life quality [1].In order to ensure timely medical intervention and treatment, their early detection relies on the analysis of retinal components such as optic disc (OD), macula (MA), blood vessels (BVs), exudates (EXs), and hemorrhages (HEs)

  • Adding complex image processing to dedicated neural networks and efficient descriptors and classifiers, the system for determining the regions of interest (RoIs) in retinal images can be considered as an effective support for decision-making in early disease diagnosis

  • Automatic detection based on specific imaging devices and real-time image processing can be used for the early-stage decision of an ophthalmologist

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Summary

Introduction

In order to ensure timely medical intervention and treatment, their early detection relies on the analysis of retinal components such as optic disc (OD), macula (MA), blood vessels (BVs), exudates (EXs), and hemorrhages (HEs). Intelligent processing of a retinal image can provide real measures of these specific ophthalmological zones. Adding complex image processing to dedicated neural networks and efficient descriptors and classifiers, the system for determining the RoIs in retinal images can be considered as an effective support for decision-making in early disease diagnosis. The system’s input is the retinal image and the output is the degree of retinal RoI damage. Automatic detection based on specific imaging devices and real-time image processing can be used for the early-stage decision of an ophthalmologist. Computer-aided diagnosis in an intelligent system has the advantages of computational power, speed, and continuous development.

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