Practical robust localization over large-scale 802.11 wireless networks
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| Venue: | in Proceedings of the 10th Annual International Conference on Mobile Computing and Networking (MOBICOM |
| Citations: | 79 - 1 self |
BibTeX
@INPROCEEDINGS{Haeberlen_practicalrobust,
author = {Andreas Haeberlen and Algis Rudys and Eliot Flannery and Dan S. Wallach and Andrew M. Ladd and Lydia E. Kavraki},
title = {Practical robust localization over large-scale 802.11 wireless networks},
booktitle = {in Proceedings of the 10th Annual International Conference on Mobile Computing and Networking (MOBICOM},
year = {},
pages = {70--84}
}
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Abstract
We demonstrate a system built using probabilistic techniques that allows for remarkably accurate localization across our entire office building using nothing more than the built-in signal intensity meter supplied by standard 802.11 cards. While prior systems have required significant investments of human labor to build a detailed signal map, we can train our system by spending less than one minute per office or region, walking around with a laptop and recording the observed signal intensities of our building’s unmodified base stations. We actually collected over two minutes of data per office or region, about 28 man-hours of effort. Using less than half of this data to train the localizer, we can localize a user to the precise, correct location in over 95 % of our attempts, across the entire building. Even in the most pathological cases, we almost never localize a user any more distant than to the neighboring office. A user can obtain this level of accuracy with only two or three signal intensity measurements, allowing for a high frame rate of localization results. Furthermore, with a brief calibration period, our system can be adapted to work with previously unknown user hardware. We present results demonstrating the robustness of our system against a variety of untrained time-varying phenomena, including the presence or absence of people in the building across the day. Our system is sufficiently robust to enable a variety of locationaware applications without requiring special-purpose hardware or complicated training and calibration procedures.







