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Belief Function Based Decision Fusion for Decentralized Target Classification in Wireless Sensor Networks

机译:基于信念函数的决策融合在无线传感器网络中的分散目标分类

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Decision fusion in sensor networks enables sensors to improve classification accuracy while reducing the energy consumption and bandwidth demand for data transmission. In this paper, we focus on the decentralized multi-class classification fusion problem in wireless sensor networks (WSNs) and a new simple but effective decision fusion rule based on belief function theory is proposed. Unlike existing belief function based decision fusion schemes, the proposed approach is compatible with any type of classifier because the basic belief assignments (BBAs) of each sensor are constructed on the basis of the classifier’s training output confusion matrix and real-time observations. We also derive explicit global BBA in the fusion center under Dempster’s combinational rule, making the decision making operation in the fusion center greatly simplified. Also, sending the whole BBA structure to the fusion center is avoided. Experimental results demonstrate that the proposed fusion rule has better performance in fusion accuracy compared with the naïve Bayes rule and weighted majority voting rule.
机译:传感器网络中的决策融合使传感器能够提高分类精度,同时减少能耗和数据传输的带宽需求。本文针对无线传感器网络中的分散式多类分类融合问题,提出了一种基于信念函数理论的简单有效的决策融合规则。与现有的基于信念函数的决策融合方案不同,该提议的方法可与任何类型的分类器兼容,因为每个传感器的基本信念分配(BBA)是基于分类器的训练输出混淆矩阵和实时观察结果构建的。我们还根据Dempster的组合规则在融合中心导出了明确的全局BBA,从而大大简化了融合中心的决策操作。而且,避免了将整个BBA结构发送到融合中心。实验结果表明,与朴素贝叶斯规则和加权多数投票规则相比,所提出的融合规则具有更好的融合精度。

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