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Explicit rough-fuzzy pattern classification model

机译:显式粗模糊模式分类模型

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摘要

An explicit rough-fuzzy model for pattern classification is proposed in the present paper. The model explores and provides the synergistic integration of the merits of both fuzzy and rough sets. It acquires improved learning and generalization capabilities through explicit fuzzification of input features. Likely optimal features are selected from these fuzzified features using neighborhood rough sets, which utilize the neighborhood relative information. The combined class belonging information of features in the designing process of model further enhances its decision-making ability. The resultant features thus provide comprehensive framework for building discriminative pattern classification models for the data sets with highly overlapping class boundaries. The efficacy of the proposed model is verified with four completely labeled data sets including one synthetic remote sensing image, and one partially labeled real remote sensing image. Various performance measurement indexes supported the superiority claim of the model.
机译:本文提出了一种用于模式分类的显式粗糙模糊模型。该模型探索并提供了模糊集和粗糙集优点的协同集成。通过显式模糊输入功能,它获得了改进的学习和泛化能力。可以使用邻域粗糙集从这些模糊化特征中选择最佳特征,这些粗糙集利用邻域相关信息。在模型设计过程中组合特征的类归属信息,进一步增强了决策能力。因此,所得的特征为构建具有高度重叠的类边界的数据集的判别模式分类模型提供了全面的框架。该模型的有效性通过四个完全标记的数据集进行了验证,其中包括一幅合成遥感图像和一幅部分标记的真实遥感图像。各种性能指标均支持该模型的优越性。

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