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Decision Fusion Using Fuzzy Dempster-Shafer Theory

机译:使用模糊Dempster-Shafer理论的决策融合

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One of the popular tools in decision making is a decision fusion since there might be several sources that provide decisions for one task. The Dempster's rule of combination is one of the decision fusion methods used frequently in many research areas. However, there are so many uncertainties in classifier output. Hence, we propose a fuzzy Dempster's rule of combination (FDST) where we fuzzify the discounted basic probability assignment and compute the fuzzy combination. We also have a rejection criterion for any sample with higher belief in both classes, not only one of the classes. We run the experiment with 2 classifiers, i.e., support vector machine (SVM) and radial basis function (RBF). We test our algorithm on 5 data sets from the UCI machine learning repository and SAR images on three military vehicle types. We compare our fusion result with that from the regular Dempster's rule of combination (DST). All of our results are comparable or better than those from the DST.
机译:决策中的流行工具之一是决策融合,因为可能有几个来源为一项任务提供决策。 Dempster的组合规则是许多研究领域经常使用的决策融合方法之一。但是,分类器输出中存在许多不确定性。因此,我们提出了一种模糊的Dempster的组合规则(FDST),在那里我们模糊了折扣的基本概率分配并计算模糊组合。我们还对任何课程相信更高的样本也有拒绝标准,不仅是其中一个类。我们用2分类器,即支持向量机(SVM)和径向基函数(RBF)进行实验。我们以三种军用车辆类型的UCI机器学习存储库和SAR图像测试我们的算法。我们将融合结果与常规Dempster组合规则(DST)进行比较。我们所有的结果都比来自DST的结果相当或更好。

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