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Integration of Heterogeneous Classifiers Based on Choquet Fuzzy Integral

机译:基于Choquet模糊积分的异构分类器集成

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An information fusion method for heterogeneous classifiers based on choquet fuzzy integral is proposed in this paper. The output information transformation and the determining methods of fuzzy density which directly affects fuzzy measure are discussed in order to construct fuzzy integral fusion model. By simulating on sat image database in the benchmark real-world databases, it shows that the proposed method is able to classify the soil types and has better classification accuracy than individual classifiers. The comparison of the classification accuracy for the complex data with for the separated data of local-attributes is studied to demonstrate that better accuracy can be achieved for an appropriate sub-task than for a complex task. That is to indicate that the appropriate task segmentation will directly affect the accuracy of classification. The classification ability of Integration for heterogeneous classifiers is compared with of integration for same type classifiers. The results show that the former has better performance.
机译:本文提出了基于Choquet模糊积分的异构分类器的信息融合方法。讨论了直接影响模糊测量的模糊密度的输出信息变换和确定方法,以构建模糊积分融合模型。通过在基准现实世界数据库中的SAT图像数据库上模拟,表明该方法能够对土壤类型进行分类并具有比单个分类器更好的分类精度。研究了对本地属性的分离数据的复杂数据的分类准确度的比较,以证明可以为适当的子任务实现更好的准确度而不是复杂任务。这表明适当的任务分割将直接影响分类的准确性。与相同类型分类器的集成相比,将异构分类器集成的分类能力进行比较。结果表明,前者具有更好的性能。

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