Enhanced feature space clustering via spectral parameter weighting for fingerprinting based indoor localization

L.S.C. Perera, K.A.M.S.V. Amarakoon, W. Weerakoon, G. Godaliyadda, M. Ekanayake
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Abstract

Fingerprinting based techniques have become a popular solution for indoor localization applications due to their robust performance compared to other approaches even in environments with non-line of sight and multipath conditions. Most of these techniques use Euclidean distance based algorithms such as k-nearest neighbors in the matching phase. This paper introduces a selective parameter weighting technique to enhance clustering conformity. The parameter weighting increases inter-cluster distance while reducing the intra-cluster distance, which in turn improves accuracy. This paper also extends this idea, to generate aggregated clusters that group existing clusters into umbrella clusters. This enables two phases of clustering. First an unknown location is matched to a region containing several grid points, after which the exact location is found within the region. Once the feature space is constructed as mentioned above, principal component analysis is used to reduce it to a set of uncorrelated radio maps which capture all the unique features inherent to each location. This work makes use of audible sound for the construction of radio maps and fingerprints. However, the concepts introduced here may easily be adapted for other types of fingerprinting such as Wi-Fi based fingerprinting etc.
基于光谱参数加权的特征空间聚类增强指纹室内定位
基于指纹识别的技术已经成为室内定位应用的一种流行解决方案,因为与其他方法相比,即使在非视线和多路径条件下,指纹识别也具有强大的性能。这些技术大多在匹配阶段使用基于欧几里德距离的算法,如k近邻算法。本文介绍了一种提高聚类一致性的选择性参数加权技术。参数加权增加了簇间距离,减少了簇内距离,从而提高了准确率。本文还扩展了这一思想,生成了将现有集群分组为伞状集群的聚合集群。这支持集群的两个阶段。首先将未知位置与包含多个网格点的区域匹配,然后在该区域内找到准确的位置。一旦如上所述构建了特征空间,主成分分析将其简化为一组不相关的无线电地图,这些地图捕获了每个位置固有的所有独特特征。这项工作利用可听到的声音来构建无线电地图和指纹。然而,这里介绍的概念可以很容易地适用于其他类型的指纹识别,如基于Wi-Fi的指纹识别等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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