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First and Second Order Statistics Features for Classification of Magnetic Resonance Brain Images
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作者 Namita Aggarwal R. K. Agrawal 《Journal of Signal and Information Processing》 2012年第2期146-153,共8页
In literature, features based on First and Second Order Statistics that characterizes textures are used for classification of images. Features based on statistics of texture provide far less number of relevant and dis... In literature, features based on First and Second Order Statistics that characterizes textures are used for classification of images. Features based on statistics of texture provide far less number of relevant and distinguishable features in comparison to existing methods based on wavelet transformation. In this paper, we investigated performance of texture-based features in comparison to wavelet-based features with commonly used classifiers for the classification of Alzheimer’s disease based on T2-weighted MRI brain image. The performance is evaluated in terms of sensitivity, specificity, accuracy, training and testing time. Experiments are performed on publicly available medical brain images. Experimental results show that the performance with First and Second Order Statistics based features is significantly better in comparison to existing methods based on wavelet transformation in terms of all performance measures for all classifiers. 展开更多
关键词 Alzheimer’s Disease Magnetic RESONANCE Imaging Feature Extraction Discrete WAVELET TRANSFORM FIRST and Second Order Statistical FEATURES
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