基于加权核的室内无线网络传感器分区分层分类方法

D. Alshamaa, F. Mourad, P. Honeine
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引用次数: 8

摘要

提出了一种室内无线网络中传感器分区定位的解决方案。这个问题是通过一种分类技术来解决的,其目标是对移动传感器的区域进行分类。该方法是分层的,并使用信念函数理论来分配区域的置信水平。为此,首先使用核密度估计对特征观测进行建模。然后,该算法使用分层聚类和相似性散度,创建一个两级层次结构,以减少一次需要分类的区域数量。在每个层次上,采用特征选择技术来优化错误分类率和特征冗余度。在无线传感器网络中进行了实验,以评估所提方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Weighted Kernel-Based Hierarchical Classification Method for Zoning of Sensors in Indoor Wireless Networks
This paper presents a solution for localization of sensors by zoning, in indoor wireless networks. The problem is tackled by a classification technique, where the objective is to classify the zone of the mobile sensor for any observation. The method is hierarchical and uses the belief functions theory to assign confidence levels for zones. For this purpose, kernel density estimation is used first to model the features observations. The algorithm then uses hierarchical clustering and similarity divergence, creating a two-level hierarchy, to reduce the number of zones to be classified at a time. At each level of the hierarchy, a feature selection technique is carried to optimize the misclassification rate and feature redundancy. Experiments are realized in a wireless sensor network to evaluate the performance of the proposed method.
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