Abstract

In GPS-denied indoor environments, localization and tracking of people can be achieved with a mobile device such as a smartphone by processing the received signal strength (RSS) of RF signals emitted from known location beacons (anchor nodes), combined with Pedestrian Dead Reckoning (PDR) estimates of the user motion. An enhacement of this localization technique is feasible if the users themselves carry additional RF emitters (mobile nodes), and the cooperative position estimates of a group of persons incorporate the RSS measurements exchanged between users. We propose a centralized cooperative particle filter (PF) formulation over the joint state of all users that permits to process RSS measurements from both anchor and mobile emitters, as well as PDR motion estimates and map information (if available) to increase the overall positioning accuracy, particularly in regions with low density of anchor nodes. Smartphones are used as a convenient mobile platform for sensor measurements acquisition, low-level processing, and data transmission to a central unit, where cooperative localization processing takes place. The cooperative method is experimentally demonstrated with four users moving in an area of 1600 , with 7 anchor nodes comprised of active RFID (radio frequency identification) tags, and additional mobile tags carried by each user. Due to the limited coverage provided by the anchor beacons, RSS-based individual localization is inaccurate (6.1 m median error), but this improves to 4.9 m median error with the cooperative PF. Further gains are produced if the PDR information is added to the filter: median error of 3.1 m (individual) and 2.6 m (cooperative); and if map information is also considered, the results are 1.8 m (individual) and 1.6 m (cooperative). Thus, for each version of the particle filter, cooperative localization outperforms individual localization in terms of positioning accuracy.

Highlights

  • We have investigated a particle filter (PF) based cooperative indoor localization method, intended for a group of users which are moving in a common environment

  • Each of these persons carries a smartphone which receives RF signals emitted from fixed location beacons in the indoor area, as well as other mobile beacons carried by the users themselves

  • The PF is formulated as a probabilistic hypothesis over the joint location of all users, which is updated as new anchor or mobile RF signals are received

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Summary

Introduction

There is currently a high social and technological demand for personal location-based services which are operative in indoor or GPS-denied environments, preferently using the smartphone as interacting device, as this special issue can attest. The most common approach to indoor positioning systems is based on the measurement of signal strength of radiofrequency (RF) signals transmitted from reference beacons in the environment and received with a device carried by the person. All current smartphones have support for the wifi and Bluetooth wireless communication standards, so these technologies are widely used for indoor positioning beacons [2]. Other RF technologies like radiofrequency identification (RFID) or ultrawideband radio (UWB) might be used with smartphone-based localization by adding external hardware

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