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Wavelet feature based SVM and NAIVE BAYES classification of glaucomatous images using PCA and Gabor filter

机译:使用PCA和Gabor滤波器基于小波特征的SVM和NAIVE BAYES分类青光眼图像

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The increase in intraocular pressure within the eye causes degradation of optic nerves which results in glaucoma. It is an eye disease in which no early symptoms will be detected until some vision loss has occurred. Therefore diagnosing of glaucoma is very essential to minimize the risk of vision loss. In this paper, the input retinal images are enhanced by using Principal Component Analysis and the blood vessels are removes by Gabor filter, morphological operation and thresholding techniques. Glaucomatous image classification is performed using texture features of an image. The texture features are obtained using 2-D discrete wavelet transform (DWT). The filters used in this paper are symlet3 (sym3) and bi-orthogonal (bio3.3, bio3.5). The extracted features are validated by support vector machine and Naive Bayes classifier. Finally the performance measures of the two classifiers are compared.
机译:眼内眼内压的升高引起视神经退化,从而导致青光眼。这是一种眼部疾病,直到出现某些视力丧失之前,都不会发现早期症状。因此,青光眼的诊断对于将视力丧失的风险降至最低至关重要。在本文中,通过主成分分析增强了输入的视网膜图像,并通过Gabor滤波,形态学运算和阈值化技术去除了血管。青光眼图像分类是使用图像的纹理特征执行的。使用二维离散小波变换(DWT)获得纹理特征。本文使用的过滤器是symlet3(sym3)和双正交(bio3.3,bio3.5)。提取的特征通过支持向量机和朴素贝叶斯分类器进行验证。最后,比较了两个分类器的性能指标。

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