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Cross-Voting SVM Method for Multiple Vehicle Classification in Wireless Sensor Networks

机译:无线传感器网络中多车辆分类的交叉投票支持向量机方法

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摘要

A novel multi-class classification method named the voting-cross support vector machine (SVM) method was proposed in this study, for classifying vehicle targets in wireless sensor networks. The advantages and disadvantages of available methods were summarized, after a comparative analysis of commonly used multi-objective classification algorithms. To improve the classification accuracy of multi-class classification and ensure the low complexity of the algorithm for engineering implementation on wireless sensor network (WSN) nodes, a framework was proposed for cross-matching and voting on the category to which the vehicle belongs after combining the advantages of the directed acyclic graph SVM (DAGSVM) method and binary-tree SVM method. The SVM classifier was selected as the basis two-class classifier in the framework, after comparing the classification performance of several commonly used methods. We utilized datasets acquired from a real-world experiment to validate the proposed method. The calculated results demonstrated that the cross-voting SVM method could effectively increase the classification accuracy for the classification of multiple vehicle targets, with a limited increase in the algorithm complexity. The application of the cross-voting SVM method effectively improved the target classification accuracy (by approximately 7%), compared with the DAGSVM method and the binary-tree SVM method, whereas time consumption decreased by approximately 70% compared to the DAGSVM method.
机译:提出了一种新颖的多类别分类方法,称为投票交叉支持向量机(SVM)方法,用于对无线传感器网络中的车辆目标进行分类。在对常用的多目标分类算法进行比较分析之后,总结了可用方法的优缺点。为了提高多类别分类的分类准确性,并确保无线传感器网络(WSN)节点上工程实现算法的复杂度较低,提出了一种在组合后对车辆所属类别进行交叉匹配和投票的框架。有向无环图SVM(DAGSVM)方法和二叉树SVM方法的优点。在比较了几种常用方法的分类性能之后,选择SVM分类器作为框架中的基础两类分类器。我们利用从实际实验中获得的数据集来验证所提出的方法。计算结果表明,交叉投票支持向量机方法可以有效地提高多个车辆目标分类的分类精度,并且算法复杂度有限。与DAGSVM方法和二叉树SVM方法相比,交叉投票SVM方法的应用有效地提高了目标分类的准确性(约7%),而与DAGSVM方法相比,时间消耗减少了约70%。

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