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An efficient scheme of target classification and information fusion in wireless sensor networks

机译:无线传感器网络中目标分类和信息融合的有效方案

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In this paper, an efficient target classification and fusion scheme for wireless sensor networks (WSNs) is proposed and evaluated. When a classification algorithm for WSN nodes is designed, parametric approaches such as Gaussian mixture model (GMM) should be more preferred to non-parametric ones due to the hard limitation in resources. The GMM algorithm not only shows good performances for target classification in WSNs but it also requires very small resources. Based on the classifier, a decision tree generated by the classification and regression tree algorithm is used to fuse the information from heterogeneous sensors. This node-level classification scheme provides a satisfactory classification rate, 94.10%, with little resources. Finally, a confidence-based fusion algorithm improves the overall accuracy by fusing the information among sensor nodes. Our experimental results show that the proposed group-level fusion algorithm improves the accuracy by an average of 4.17% accuracy with randomly selected nodes.
机译:本文提出并评估了一种有效的无线传感器网络目标分类与融合方案。当设计用于WSN节点的分类算法时,由于资源的严格限制,诸如高斯混合模型(GMM)之类的参数方法应比非参数方法更可取。 GMM算法不仅在WSN中显示出良好的目标分类性能,而且还需要非常少的资源。基于分类器,分类和回归树算法生成的决策树用于融合来自异构传感器的信息。该节点级分类方案提供了令人满意的分类率,为94.10%,且资源很少。最后,基于置信度的融合算法通过在传感器节点之间融合信息来提高整体精度。我们的实验结果表明,在随机选择节点的情况下,提出的组级融合算法平均可提高4.17%的准确性。

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