Smartphone-based Localization for Blind Navigation in Building-Scale Indoor Environments - Robotics Institute Carnegie Mellon University

Smartphone-based Localization for Blind Navigation in Building-Scale Indoor Environments

Masayuki Murata, Dragan Ahmetovic, Daisuke Sato, Hironobu Takagi, Kris M. Kitani, and Chieko Asakawa
Journal Article, Pervasive and Mobile Computing, Vol. 57, pp. 14 - 32, July, 2019

Abstract

Continuous, accurate, and real-time smartphone-based localization is a promising technology for supporting independent mobility of people with visual impairments. However, despite extensive research on indoor localization techniques, localization technologies are still not ready for deployment in large and complex environments such as shopping malls and hospitals, where navigation assistance is needed most. We identify six key challenges for accurate smartphone localization related to the large-scale nature of the navigation environments and the user’s mobility. To address these challenges, we present a series of techniques that enhance a probabilistic localization algorithm. The algorithm utilizes mobile device inertial sensors and Received Signal Strength (RSS) from Bluetooth Low Energy (BLE) beacons. We evaluate the proposed system in a 21,000 m shopping mall that includes three multi-story buildings and a large open underground passageway. Experiments conducted in this environment demonstrate the effectiveness of the proposed technologies to improve localization accuracy. Field experiments with visually impaired participants confirm the practical performance of the proposed system in realistic use cases.

BibTeX

@article{Murata-2019-109776,
author = {Masayuki Murata and Dragan Ahmetovic and Daisuke Sato and Hironobu Takagi and Kris M. Kitani and Chieko Asakawa},
title = {Smartphone-based Localization for Blind Navigation in Building-Scale Indoor Environments},
journal = {Pervasive and Mobile Computing},
year = {2019},
month = {July},
volume = {57},
pages = {14 - 32},
}