An LED Based Indoor Localization System Using k-Means Clustering

M. Saadi, Touqeer Ahmad, Yan Zhao, L. Wuttisittikulkij
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引用次数: 13

Abstract

This paper introduces a novel visible light positioning (VLP) system using an un-supervised machine learning approach. Two transmitters consist of light emitting diodes (LEDs) which are modulated with 1 kHz and 2.5 kHz sinusoidal signals respectively. At the receiver end, the received signal strength (RSS) is calculated and a sparse grid/cube is constructed by measuring light intensity at different locations. A bilinear interpolation is then applied to create a dense grid of readings which is used for the training of a hierarchical k-means clustering system. For a given query LEDs reading, the trained clusters are used for position estimation by minimizing the distances between the readings and cluster centroids. Experimental results show that an average accuracy of 0.31m can be achieved for a room with the dimensions of 4.3 × 4 × 4 m3. We further compared the performance of two other clustering methods: k-medoids and fuzzy c-means however no significant improvement over the kmeans clustering is found.
使用 k-Means 聚类的基于 LED 的室内定位系统
本文介绍了一种采用无监督机器学习方法的新型可见光定位(VLP)系统。两个发射器由发光二极管(LED)组成,分别使用 1 kHz 和 2.5 kHz 正弦信号进行调制。在接收端,通过测量不同位置的光强度,计算接收信号强度(RSS)并构建稀疏网格/立方体。然后应用双线性插值法创建密集的读数网格,用于分层 k-means 聚类系统的训练。对于给定的 LED 读数查询,通过最小化读数与聚类中心点之间的距离,将训练好的聚类用于位置估计。实验结果表明,对于一个尺寸为 4.3 × 4 × 4 m3 的房间,平均准确度可达 0.31 米。我们进一步比较了其他两种聚类方法的性能:k-medoids 和模糊 c-means,但与 kmeans 聚类方法相比,没有发现明显的改进。
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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