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Classifying Images Using Multiple Binary-Class Decision Trees for Object-Based Image Retrieval

机译:使用多个二进制类决策树进行分类图像,用于基于对象的图像检索

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This paper describes an approach to multiclass object classification using local information based invariant object-contour representation and a combination of one-per-class binary-class decision tree classifiers. The object representation scheme is based on the polygonal approximations of object contours. C4.5 is used to learn each of the binary-class tree classifiers which are used to predict the class of each segment of an object. A new decision combination method is used to determine the class of an object based on class probability distribution of each segment of the object on each of the binary-class trees. The proposed object classification approach is invariant to translation, rotation, and scale changes of objects. On applying this approach to a hand tool image database in the situation of image retrieval, the experimental results show that the retrieval performance is significantly better than the results obtained by previous studies.
机译:本文介绍了一种使用基于本地信息的不变对象 - 轮廓表示和单类二进制类决策树分类器的组合来对多种信息对象分类的方法。对象表示方案基于对象轮廓的多边形近似。 C4.5用于了解每个二进制类树分类器,用于预测对象的每个段的类别。一种新的决策组合方法用于基于每个二进制类树上的每个段的类概率分布来确定对象的类。所提出的对象分类方法是不变的转换,旋转和对象的变化。在图像检索情况下将这种方法应用于手动工具图像数据库,实验结果表明,检索性能明显优于先前研究获得的结果。

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