无线传感器网络协同点对点训练与目标分类

Xue Wang, Sheng Wang, Daowei Bi, Liang Ding, Junjie Ma
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引用次数: 3

摘要

目标分类是无线传感器网络中的一个重要问题。提出了一种基于支持向量机的WSN协同点对点(P2P)训练与分类方法。该方法在P2P模式下,通过传感器节点之间的协作,逐步完成训练过程。为了降低能耗和提高精度,根据几种可行的能耗和信息利用率度量,自主选择合适的传感器节点集进行训练,实现传感器节点间的协同。由于有目的地选择传感器节点,动态协同支持向量机可以克服WSN中不可避免的样本缺失率和误报率。结果表明,所提出的动态协同支持向量机能够有效地实现WSN中的目标分类。验证了所提出的动态协同支持向量机在能效和时延方面具有突出的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Peer-to-Peer Training and Target Classification in Wireless Sensor Networks
Target classification is important in wireless sensor network (WSN). This paper proposes a collaborative peer-to-peer (P2P) training and classifying method with support vector machine (SVM) for WSN. The proposed method incrementally carries out the training process with the collaboration of sensor nodes in P2P paradigm. For decreasing energy consumption and improving accuracy, the collaboration of sensor nodes is implemented by autonomously selecting the proper set of sensor nodes to carry out the training process according to several feasible measures of energy consumption and information utility. Because of the purposeful sensor nodes selection, dynamic collaborative SVM can conquer the inevitable missing rate and false rate of samples in WSN. Results demonstrate that the proposed dynamic collaborative SVM can effectively implement target classification in WSN. It is also verified that the proposed dynamic collaborative SVM has outstanding performance in energy efficiency and time delay.
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