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首页> 外文期刊>Communications Letters, IEEE >Occurrence-Based Fingerprint Clustering for Fast Pattern-Matching Location Determination
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Occurrence-Based Fingerprint Clustering for Fast Pattern-Matching Location Determination

机译:基于事件的指纹聚类快速确定模式匹配位置

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摘要

Fingerprint clustering is an efficient approach to address the scalability problem of the pattern-matching localization system in large-scale environments. In this letter, we propose an occurrence-based fingerprint clustering algorithm that exploits the useful information embedded in the statistics of received signal strength measurements. Our algorithm allows that a reference point can have more than one fingerprint according to the highest received signal strength, and can be grouped into several clusters according to its highest and second highest received signal strengths. Simulation and experimental results show that our algorithm performs consistently a little better than the peer one without clustering in terms of improved localization accuracy and reduced fingerprint comparisons. Compared with two other clustering algorithms, our algorithm also achieves higher localization accuracy and reduces false cluster selection.
机译:指纹集群是一种解决大规模环境中模式匹配本地化系统可伸缩性问题的有效方法。在这封信中,我们提出了一种基于事件的指纹聚类算法,该算法利用了嵌入在接收信号强度测量的统计数据中的有用信息。我们的算法允许参考点根据最高的接收信号强度具有一个以上的指纹,并且可以根据其最高和第二最高的接收信号强度分为多个群集。仿真和实验结果表明,在提高定位精度和减少指纹比较方面,我们的算法在不聚类的情况下始终比对等算法更好。与其他两种聚类算法相比,我们的算法还实现了更高的定位精度并减少了错误的聚类选择。

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