4.4 Article

Computer aided diagnosis of glaucoma using discrete and empirical wavelet transform from fundus images

期刊

IET IMAGE PROCESSING
卷 13, 期 1, 页码 73-82

出版社

WILEY
DOI: 10.1049/iet-ipr.2018.5297

关键词

singular value decomposition; discrete wavelet transforms; diseases; wavelet transforms; biomedical optical imaging; support vector machines; eye; image classification; feature extraction; medical image processing; singular value decomposition; fourteen robust features; glaucoma detection; discrete wavelet; fundus images; eye disorder; progressive deterioration; optic nerve fibres; empirical wavelet transforms; EWT; feature extraction; image decomposition; hybrid concatenation approach; DWT; band images; extracted features; concatenated features

资金

  1. Medical Image Analysis Group (MIAG) [26]

向作者/读者索取更多资源

Glaucoma is a class of eye disorder; it causes progressive deterioration of optic nerve fibres. Discrete wavelet transforms (DWTs) and empirical wavelet transforms (EWTs) are widely used methods in the literature for feature extraction using image decomposition. However, to increase the accuracy for measuring features of images a hybrid and concatenation approach has been presented in the proposed research work. DWT decomposes images into approximate and detail coefficients and EWT decomposes images into its sub band images. The concatenation approach employs the combination of all features obtained using DWT and EWT and their combination. Extracted features from each of DWT, EWT, DWTEWT and EWTDWT are concatenated. Concatenated features are normalised, ranked and fed to singular value decomposition to find robust features. Fourteen robust features are used by support vector machine classifier. The obtained accuracy, sensitivity and specificity are 83.57, 86.40 and 80.80%, respectively, for tenfold cross validation which outperforms the existing methods of glaucoma detection.

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