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Ensemble of Two-Class Classifiers for Image Annotation

机译:用于图像注释的两类分类器的集合

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摘要

Image annotation can be formulated as a multi-class classification problem. A multi-class classification problem can be solved by ensemble classifiers. We investigate the ensemble of multiple two-class classifiers based on MPEG-7 standard. To get ride of redundancy information, a binary-coded chromosome genetic algorithm is used to select individual optimal classification feature pattern for each two-class other than for all the classes. Two-class classifiers are generated based on the results of feature selection, and majority voting scheme is used to combine two-class classifiers. The experimental results over 2000 classified Corel images show that our approaches can improve annotation accuracies.
机译:图像标注可以表述为多类分类问题。集成分类器可以解决多类分类问题。我们研究了基于MPEG-7标准的多个两类分类器的集合。为了获得冗余信息,使用二进制编码的染色体遗传算法为每个两类(而不是所有类)选择单独的最佳分类特征模式。基于特征选择的结果生成两类分类器,并使用多数投票方案组合两类分类器。 2000多个分类的Corel图像的实验结果表明,我们的方法可以提高注释的准确性。

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