Abstract

Location Based Service (LBS) is one of the important aspects of a smart city. Accurate indoor localization plays a vital role in LBS. The ability to localize various subjects in the area of interest facilitates further ubiquitous environments. Specifically, device free localization using wireless signals is getting increased attention as human location is estimated using its impact on the surrounding wireless signals without any active device tagged with subject. In this paper, we propose MuDLoc, the first multi-view discriminant learning approach for device free indoor localization using both amplitude and phase features of Channel State Information (CSI) from multiple Access Points (APs). The same location oriented CSI data can be observed by different APs, thus generating multiple distinct even heterogeneous samples. Multi-view learning is an emerging technique in machine learning which improve performance by utilizing diversity from different view data. In MuDLoc, the localization is modeled as a pattern matching problem, where the target location is predicted based on similarity measure of CSI features of an unknown location with those of the training locations. MuDLoc implements Generalized Inter-view and Intra-view Discriminant Correlation Analysis (GI 2 DCA), a discriminative feature extraction approach that incorporates inter-view and intra-view class associations while maximizing pairwise correlations across multi-view data sets. Experimental results from two cluttered environments show that MuDLoc can estimate location with high accuracy which outperforms other benchmark approaches.

Highlights

  • Learning important human contextual information is one of the fundamental features to establishing a smart environment

  • This paper summarizes the classical sum of correlations generalization (SUMCOR) and Multi-view CCA (MCCA) is used as an abbreviation for SUMCOR maximization approach throughout the paper. [30], [31]

  • We find that approximately 90% of the test locations for MuDLoc have an error under 1 m, while the percentage of test locations having a smaller error than 1 m are 75%, 68%, 37% and 33% for MCCA, Pairwise CCA (PWCCA), Pilot and PC-DfL, respectively

Read more

Summary

INTRODUCTION

Learning important human contextual information is one of the fundamental features to establishing a smart environment. MuDLoc, a multi-view discriminant learning approach for device free indoor localization using CSI is proposed. In order to exploit class structures for cross-view recognition, the proposed MuDLoc method implements Generalized Inter-view and Intra-view Discriminant Correlation Analysis (GI2DCA), which, unlike [34], utilizes the principles of both CCA and discriminant analysis based multi-view subspace learning methods to take advantage of these two algorithms. GI2DCA is a subspace learning approach that can learn single unified discriminant common space from the joint spatial filtering of multiple sets of CSI data recorded for a particular target location In this common space, the betweenclass variations from both inter-view and intra-view are maximized, while keeping the projections of different views close to each other in the latent common space.

MOTIVATION
CANONICAL CORRELATION ANALYSIS
OFFLINE PHASE
ONLINE PHASE
Findings
CONCLUSION
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call