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A feature scaling based k-nearest neighbor algorithm for indoor positioning system

机译:基于特征缩放的k近邻算法

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With the increasing popularity of wireless local area network infrastructure, Wi-Fi fingerprint based indoor positioning systems have received considerable attention in recent years. In the literature, most existing work in this area focuses on techniques that match the vector of radio signal strength (RSS) values reported by a mobile device to the fingerprints collected at predetermined reference points (RPs) by comparing the similarity (measured based on RSS difference) between them. However, these existing techniques fail to consider the fact that equal RSS differences at different RSS levels may not mean equal distances in reality. To address this issue, in this paper, we propose a feature scaling based k-nearest neighbor algorithm (FS-kNN) for improved localization accuracy. In FS-kNN, we build a novel RSS-based feature scaling model, which introduces signal-level-scaled weights in the calculation of effective signal distance between signal vector reported by mobile device and existing fingerprints. Experimental results show that FS-kNN can achieve an average error distance as low as 1.93 meters, which is superior to previous work.
机译:随着无线局域网基础设施的日益普及,基于Wi-Fi指纹的室内定位系统近年来受到了相当大的关注。在文献中,该领域中的大多数现有工作集中在通过比较相似度(基于RSS进行测量),将移动设备报告的无线电信号强度(RSS)值向量与在预定参考点(RPs)上收集的指纹相匹配的技术。两者之间的差异)。但是,这些现有技术未能考虑以下事实:在不同的RSS级别上相等的RSS差异实际上可能并不意味着相等的距离。为了解决这个问题,在本文中,我们提出了一种基于特征缩放的k最近邻算法(FS-kNN),以提高定位精度。在FS-kNN中,我们建立了一个新颖的基于RSS的特征缩放模型,该模型在计算移动设备报告的信号矢量与现有指纹之间的有效信号距离时引入了信号级缩放的权重。实验结果表明,FS-kNN可以实现低至1.93米的平均误差距离,优于以前的工作。

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