2012
DOI: 10.1109/titb.2011.2176540
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Wavelet-Based Energy Features for Glaucomatous Image Classification

Abstract: Texture features within images are actively pursued for accurate and efficient glaucoma classification. Energy distribution over wavelet subbands is applied to find these important texture features. In this paper, we investigate the discriminatory potential of wavelet features obtained from the daubechies (db3), symlets (sym3), and biorthogonal (bio3.3, bio3.5, and bio3.7) wavelet filters. We propose a novel technique to extract energy signatures obtained using 2-D discrete wavelet transform, and subject these… Show more

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Cited by 235 publications
(123 citation statements)
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“…Sensitivity, specificity, and area under receiver operating characteristic curve (AUROC) were assessed. Dua S. et al [3] dexterously conducted relentless research on the biased latent of wavelet traits gathered from the daubechies (db3), symlets (sym3), and biorthogonal (bio3.3, bio3.5, and bio3.7) wavelet filters. They brought to light a method to mine energy signatures attained by the use of 2-D discrete wavelet transform, and subject these signatures to various trait levels and trait choice approaches.…”
Section: Literature Surveymentioning
confidence: 99%
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“…Sensitivity, specificity, and area under receiver operating characteristic curve (AUROC) were assessed. Dua S. et al [3] dexterously conducted relentless research on the biased latent of wavelet traits gathered from the daubechies (db3), symlets (sym3), and biorthogonal (bio3.3, bio3.5, and bio3.7) wavelet filters. They brought to light a method to mine energy signatures attained by the use of 2-D discrete wavelet transform, and subject these signatures to various trait levels and trait choice approaches.…”
Section: Literature Surveymentioning
confidence: 99%
“…In the random walk of the j th scrounger, this is performed by supplementing an arbitrary locational value of the producers, which is easily gathered from the set of Y values from the producers, as defined by Eq. (8), 3 ( )…”
Section: Gso Work-flowmentioning
confidence: 99%
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“…They used classifiers such as Naive Based Classifier, k-Nearest Neighbor Classifier and Support Vector Machines (SVM) [49] to classify between healthy and Glaucomatous images and they found SVM to be less prone to sparsely sampled feature space. Dua et al [94] used Wavelet-Based Energy Features and compared the performance of different classifiers including the previously mentioned classifiers, Random Forests [98] and Sequential minimal optimization (SMO) [99]. From SMO they obtained the maximum classification accuracy.…”
Section: Non-segmentation Based Classification Between Normal and Glamentioning
confidence: 99%