首页> 外文会议>Fuzzy Systems and Knowledge Discovery, 2009. FSKD '09 >A Novel Visual Combining Classifier Based on a Two-dimensional Graphical Representation of the Attribute Data
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A Novel Visual Combining Classifier Based on a Two-dimensional Graphical Representation of the Attribute Data

机译:基于属性数据二维图形表示的新型视觉组合分类器

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A novel Visual Combining Classifier (VCC), which integrates two-dimensional graphical representation of the attribute data, image processing and pattern recognition techniques together, has been proposed. The basic principle of the VCC is mapping attribute data of a data matrix to the two-dimensional graphs, transforming these graphs to sub classifiers by pixel graphs, and combining the sub classifiers by decision rules. By interactive approaches, the optimum graphs for classification could be chosen and then pattern recognition could be realized automatically. The two experiments of the scatter and pole graphical representations based on Iris database have been made and classification precisions are 98.67% and 97.33% by LOOCV respectively.
机译:提出了一种新颖的视觉组合分类器(VCC),该分类器将属性数据的二维图形表示,图像处理和模式识别技术集成在一起。 VCC的基本原理是将数据矩阵的属性数据映射到二维图,通过像素图将这些图转换为子分类器,并通过决策规则将子分类器组合。通过交互式方法,可以选择用于分类的最佳图形,然后可以自动实现模式识别。进行了两个基于Iris数据库的散点图和极点图表示的实验,LOOCV的分类精度分别为98.67%和97.33%。

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