Abstract

In this paper, we utilize novel sensors built-in commercial smart devices to propose a schema which can identify floors with high accuracy and efficiency. This schema can be divided into two modules: floor identifying and floor change detection. Floor identifying module starts at initial phase of positioning, and responsible for determining which floor the positioning start. We have estimated two methods to identify initial floor based on K-Nearest Neighbors (KNN) and BP Neural Network, respectively. In order to improve performance of KNN algorithm, we proposed a novel method based on weighting signal strength, which can identify floors robust and quickly. Floor change detection module turns on after entering into continues positioning procedure. In this module, sensors (such as accelerometer and barometer) of smart devices are used to determine whether the user is going up and down stairs or taking an elevator. This method has fused different kinds of sensor data and can adapt various motion pattern of users. We conduct our experiment with mobile client on Android Phone (Nexus 5) at a four-floors building with an open area between the second and third floor. The results demonstrate that our scheme can achieve an accuracy of 99% to identify floor and 97% to detecting floor changes as a whole.

Highlights

  • Location is essential to Location Based Service (LBS) in Ubiquitous computing

  • Combining with WiFi and sensors built-in smart devices, there are a lot of works about indoor localization technologies or systems without human intervention, such as LiFS (Yang, et al, 2012), UnLoc (Wang, et al, 2012), WILL (Wu, et al, 2013) and Zee (Rai, et al, 2012)

  • This paper introduce a K-Nearest Neighbors (KNN) algorithm based on weighting signal strength

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Summary

INTRODUCTION

Location is essential to Location Based Service (LBS) in Ubiquitous computing. Outdoor positioning technology like GPS has been widely used in our daily life. Combining with WiFi and sensors built-in smart devices, there are a lot of works about indoor localization technologies or systems without human intervention, such as LiFS (Yang, et al, 2012), UnLoc (Wang, et al, 2012), WILL (Wu, et al, 2013) and Zee (Rai, et al, 2012). These works have reduced the requiring of strenuous efforts by surveyors, but failed to discuss the error caused by similarity of fingerprints in different floors.

SYSTEM OVERVIEW
KNN-Based Floor Identification
Floor Change Detection Module
Sensitive Area based method
EXPERIENCE AND ANALYSIS
Method
Findings
CONCLUSIONS
Full Text
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