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Ultrasonic liver tissues classification by fractal feature vector based on M-band wavelet transform

机译:基于M波段小波变换的分形特征向量对超声肝组织的分类

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摘要

Describes the feasibility of selecting a fractal feature vector based on M-band wavelet transform to classify ultrasonic liver images - normal liver, cirrhosis, and hepatoma. The proposed feature extraction algorithm is based on the spatial-frequency decomposition and fractal geometry. Various classification algorithms based on respective texture measurements and filter banks are presented and tested. Classifications for the three sets of ultrasonic liver images reveal that the fractal feature vector based on M-band wavelet transform is trustworthy. A hierarchical classifier, which is based on the proposed feature extraction algorithm is at least 96.7% accurate in the distinction between normal and abnormal liver images and is at least 93.6% accurate in the distinction between cirrhosis and hepatoma liver images. Additionally, the criterion for feature selection is specified and employed for performance comparisons herein.
机译:描述了基于M带小波变换选择分形特征向量以对超声肝图像进行分类的可行性-正常肝,肝硬化和肝癌。提出的特征提取算法基于空间频率分解和分形几何。提出并测试了基于各自纹理测量和滤波器组的各种分类算法。对三组超声肝图像的分类表明,基于M带小波变换的分形特征向量是值得信赖的。基于提出的特征提取算法的分层分类器,在正常和异常肝脏图像之间的区分至少准确度为96.7%,在肝硬化和肝癌肝脏图像之间的区分准确度至少为93.6%。另外,在此指定用于特征选择的标准并将其用于性能比较。

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