CFS Based Feature Subset Selection for Enhancing Classification of Similar Looking Food Grains- A Filter Approach

K. Pushpalatha, A. Karegowda
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引用次数: 11

Abstract

Feature selection plays an important role in machine learning. The best selection of significant feature set results inbetter performance of classifiers. In this work feature selection using filter approach for classification of 10 different similar looking food grains has been carried out. As part of the work, firstly texture features of food grain images are extracted using color based GLCM. As part of feature subset selection, the Correlation-based Feature Selection (CFS) filter approach has been applied with 5 different search methods. The evaluation of feature selected is done using 6 different classifiers. Result shows the feature set selected by the CFS filter have indeed enhanced the classification performance of all the 6 classifiers when compared to their performance with the original feature set.
基于CFS的特征子集选择增强相似食物颗粒分类-一种滤波方法
特征选择在机器学习中起着重要的作用。有效特征集的最佳选择可以提高分类器的性能。本文采用滤波方法对10种不同的相似食品颗粒进行了特征选择。作为工作的一部分,首先利用基于颜色的GLCM提取粮食图像的纹理特征;作为特征子集选择的一部分,将基于关联的特征选择(CFS)滤波方法应用于5种不同的搜索方法。使用6种不同的分类器对选择的特征进行评估。结果表明,与原始特征集相比,CFS滤波器选择的特征集确实提高了所有6个分类器的分类性能。
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