Dimension reduction in radio maps based on the supervised kernel principal component analysis

被引:0
|
作者
Bing Jia
Baoqi Huang
Hepeng Gao
Wuyungerile Li
机构
[1] Inner Mongolia University,College of Computer Science
[2] Jilin University,College of Software
来源
Soft Computing | 2018年 / 22卷
关键词
Radio map; WiFi fingerprinting; Supervised kernel principal component analysis;
D O I
暂无
中图分类号
学科分类号
摘要
Differently from most existing studies either directly eliminating redundant WiFi APs with trivial importance or adopting unsupervised dimension reduction methods, e.g. principal component analysis (PCA), this paper employs a supervised approach to take the full advantage of the information available for building radio maps, i.e. location labels attached to fingerprints, to compress original radio maps. Specifically, in the offline phase, the supervised kernel PCA (SKPCA) method is employed to derive a nonlinear and optimal embedding in a low-dimensional subspace; in the online phase, any sample vector containing received signal strengths can be projected onto the optimal subspace in real-time for further localization processing. Experiments are carried out not only in a real environment but also using an open dataset. It is shown that the compressed radio maps based on SKPCA have much smaller sizes than their original radio maps, but achieve similar localization performance and significantly outperform the other two popular PCA- based unsupervised dimension reduction methods, i.e. PCA and PCA-MLE.
引用
收藏
页码:7697 / 7703
页数:6
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