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Journal ArticleDOI

Automated Diagnosis of Glaucoma Using Texture and Higher Order Spectra Features

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TLDR
A novel method for glaucoma detection using a combination of texture and higher order spectra (HOS) features from digital fundus images is presented and it is demonstrated that the texture and HOS features after z-score normalization and feature selection, and when combined with a random-forest classifier, performs better than the other classifiers.
Abstract
Glaucoma is the second leading cause of blindness worldwide. It is a disease in which fluid pressure in the eye increases continuously, damaging the optic nerve and causing vision loss. Computational decision support systems for the early detection of glaucoma can help prevent this complication. The retinal optic nerve fiber layer can be assessed using optical coherence tomography, scanning laser polarimetry, and Heidelberg retina tomography scanning methods. In this paper, we present a novel method for glaucoma detection using a combination of texture and higher order spectra (HOS) features from digital fundus images. Support vector machine, sequential minimal optimization, naive Bayesian, and random-forest classifiers are used to perform supervised classification. Our results demonstrate that the texture and HOS features after z-score normalization and feature selection, and when combined with a random-forest classifier, performs better than the other classifiers and correctly identifies the glaucoma images with an accuracy of more than 91%. The impact of feature ranking and normalization is also studied to improve results. Our proposed novel features are clinically significant and can be used to detect glaucoma accurately.

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Citations
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Journal ArticleDOI

Investigating the impact of data normalization on classification performance

TL;DR: This study aims to investigate the impact of fourteen data normalization methods on classification performance considering full feature set, feature selection, and feature weighting and suggests a set of the best and the worst methods combining the normalization procedure and empirical analysis of results.
Journal ArticleDOI

Deep convolution neural network for accurate diagnosis of glaucoma using digital fundus images

TL;DR: An eighteen layer CNN framework is proposed for glaucoma diagnosis with the highest accuracy of 98.13% using 1426 fundus images, which demonstrates the robustness of the system, which can be used as a supplementary tool for the clinicians to validate their decisions.
Journal ArticleDOI

Wavelet-Based Energy Features for Glaucomatous Image Classification

TL;DR: This paper proposes a novel technique to extract energy signatures obtained using 2-D discrete wavelet transform, and subject these signatures to different feature ranking and feature selection strategies, achieving an accuracy of around 93% using tenfold cross validations.
Journal ArticleDOI

Data mining technique for automated diagnosis of glaucoma using higher order spectra and wavelet energy features

TL;DR: A novel integrated index called Glaucoma Risk Index (GRI) is proposed which is made up of HOS and DWT features, to diagnose the unknown class using a single feature and it is hoped that this GRI will aid clinicians to make a faster glaucomA diagnosis during the mass screening of normal/glaucoman images.
Journal ArticleDOI

Automated Diagnosis of Glaucoma Using Empirical Wavelet Transform and Correntropy Features Extracted From Fundus Images

TL;DR: A new methodology for an automated diagnosis of glaucoma using digital fundus images based on empirical wavelet transform (EWT) is presented and the classification accuracy is 98.33% and 96.67% using threefold and tenfold cross validation, respectively.
References
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Fast training of support vector machines using sequential minimal optimization, advances in kernel methods

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Fast training of support vector machines using sequential minimal optimization

TL;DR: In this article, the authors proposed a new algorithm for training Support Vector Machines (SVM) called SMO (Sequential Minimal Optimization), which breaks this large QP problem into a series of smallest possible QP problems.
Journal ArticleDOI

Texture analysis using gray level run lengths

TL;DR: In this paper, a set of texture features based on gray level run lengths is described, and good classification results are obtained with these features on a sets of samples representing nine terrain types.

Texture analysis using grey level run lengths

TL;DR: A set of texture features based on gray level run lengths is described, and good classification results are obtained with these features on a set of samples representing nine terrain types.
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