基于特征组合的超声图像肝脏疾病分类

A. Alivar, H. Daniali, M. Helfroush
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引用次数: 14

摘要

本文提出了一种基于特征组合的正常肝、脂肪肝和肝硬化超声图像的计算机辅助诊断系统。特征包括空间域特征和变换域特征。对比研究表明,基于空间域的特征和基于变换域的特征都有很好的分类效果。因此,要在CAD系统中同时拥有这两个特征空间,最好是将这两个特征空间结合起来。本文将二维WPT和二维Gabor滤波器组子图像的能量和能量偏差作为变换域特征,并将三个特征向量组合在一起,使K近邻分类器的分类准确率达到96.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of liver diseases using ultrasound images based on feature combination
In this paper a computer-aided diagnostic system for classification of normal, fatty and cirrhotic liver ultrasound images using feature combination is proposed. The features including spatial domain and transform domain features. Comparative studies have shown that both spatial-domain based and transform-domain based features have good effects on classification. So, to have them both in the CAD system, it is preferred to have combination of these two feature spaces. Here we have extracted gray level cooccurrence matrix features as spatial domain feature and also energy and energy deviation of 2-D WPT and 2-D Gabor filter banks sub-images as transform domain features, then three feature vectors have been combined to achieve classification accuracy of 96.1% by K Nearest neighbor (KNN) classifier.
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