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Feature extraction and classification of ultrasound liver images using haralick texture-primitive features: Application of SVM classifier

机译:利用Haralick纹理 - 原语特征的超声肝图像特征提取和分类:SVM分类器的应用

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This paper describes the feasibility of selecting features from the gray level co-occurrence matrix (GLCM) with 12 haralick features based on texture to classify ultrasonic diseased liver into fatty, cyst and cirrhosis. The objective in this work is the selection of the most discriminating parameters for liver disease classification. The diagnosis scheme includes three modules: preprocessing, feature analysis and classification modules. The images were preprocessed by using Anisotropic Diffusion speckle reduction method. Then the features, derived from the gray level co-occurrence matrix with twelve haralick features are extracted from both entire image and pathology bearing region (PBR) in the image. The analysis of the obtained results suggested that diseases like cyst, fatty, cirrhosis can be diagnosed with only five features namely contrast, auto correlation, Angular Second Momentum, cluster shade and cluster prominence out of 12 features belonging to haralick features. The result show that the Support Vector Machine classifiers with five haralick features show the classification accuracy rate is comparatively better when it is compared with the feature extraction by other methods for the same datasets which is our earlier work. The dataset used in each phase of the work are authenticated datasets provided by doctors. The results at each phase have been evaluated with doctors in the relevant field.
机译:本文介绍了基于纹理的12个Haralick特征从灰度共生矩阵(GLCM)的选择性,将超声波患病肝脏分类为脂肪,囊肿和肝硬化。这项工作的目的是选择肝病分类的最辨别参数。诊断方案包括三个模块:预处理,特征分析和分类模块。通过使用各向异性扩散斑点还原方法预处理图像。然后从图像中的整个图像和病理承载区(PBR)中提取来自灰度共发生矩阵的特征,从图像中的整个图像和病理学承载区(PBR)中提取。对所得结果的分析表明,囊肿,脂肪,肝硬化等疾病只有五个特征,即对比,自动相关,角度第二次动量,集群阴影和群集突出,其中12个特征属于Haralick特征。结果表明,随着其他方法的特征提取与我们之前的工作组的其他方法相比,具有五个haralick特征的支持向量机分类器显示分类精度率比较良好。工作阶段中使用的数据集是医生提供的经过身份验证的数据集。每阶段的结果已被相关领域的医生评估。

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