钢缺陷分类的特征选择

Daun Jeong, Dongyeop Kang, Sangchul Won
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引用次数: 5

摘要

本文采用包装算法对钢缺陷数据进行特征选择,以提高分类性能。数据是用钢缺陷图像构造的,钢缺陷图像分为缺陷和伪缺陷两类。该算法利用kappa统计量选择与类相关的特征。针对钢缺陷数据高度不平衡的问题,提出了提高小类精度的措施。对几种算法进行了性能比较。
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Feature selection for steel defects classification
In this paper, features of steel defects data are selected using a wrapper algorithm to increase classification performance. The data are constructed using images of steel defects which are classified two classes as defects and pseudo defects. The suggested algorithm selects features which are relevant to class using the kappa statistic. This measure is suggested to improve accuracy of minor class because steel defects data are highly imbalanced. The several algorithms were compared with the algorithm to show performances.
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