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Feature Ranking of Spatial Domain Features for Efficient Characterization of Stroke Lesions

机译:空间域特征的特征排名,以有效表征卒中病变

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Development of automatic framework for efficient characterization of brain lesions is a significant research concern due to the complex properties exhibited by the brain tissues. This study focuses on observing the properties of such composite structures in order to identify optimal features for characterizing the properties of normal and abnormal brain tissues. This work initially applies Fuzzy C Mean algorithm to identify the region of interest. After segmentation, four different types of features are extracted from the region of interest. These features include first-order parameters, Gray-level Co-occurrence Matrix (GLCM) parameters, Laws texture features, and Gray-Level Run-Length Matrix (GLRLM) parameters. These identification features were ranked in order of pertinence with the help of Mutual Information and Statistical Dependence-based feature ranking algorithms. Based on the inference obtained from the Mutual Information and Statistical Dependence-based feature ranking algorithms, twelve best features are selected for characterizing the properties of the normal and abnormal brain tissues.
机译:由于脑组织表现出复杂的特性,有效表征脑损伤的自动框架的开发是一项重要的研究课题。这项研究的重点是观察这种复合结构的特性,以便确定表征正常和异常脑组织特性的最佳特征。这项工作最初应用模糊C均值算法来识别感兴趣的区域。在分割之后,从感兴趣区域提取四种不同类型的特征。这些功能包括一阶参数,灰度共生矩阵(GLCM)参数,Laws纹理特征和灰度行程长度矩阵(GLRLM)参数。借助互信息和基于统计依赖的特征排名算法,对这些识别特征按相关性顺序进行了排名。基于从基于互信息和统计依赖的特征排名算法获得的推论,选择十二个最佳特征来表征正常和异常脑组织的特性。

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