2019 20th IEEE International Conference on Mobile Data Management (MDM) 2019
DOI: 10.1109/mdm.2019.00-12
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Towards Robust Methods for Indoor Localization using Interval Data

Abstract: Indoor localization has gained an increase in interest recently because of the wide range of services it may provide by using data from the Internet of Things. Notwithstanding the large variety of techniques available, indoor localization methods usually show insufficient accuracy and robustness performance because of the noisy nature of the raw data used. In this paper, we investigate ways to work explicitly with range of data, i.e., interval data, instead of point data in the localization algorithms, thus pr… Show more

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Cited by 2 publications
(2 citation statements)
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“…Fingerprinting [65,66] techniques for indoor localization generate images of objects by sensing electric currents. Then, the image is compared with those in a database (DB).…”
Section: Exponential Moving Averagementioning
confidence: 99%
“…Fingerprinting [65,66] techniques for indoor localization generate images of objects by sensing electric currents. Then, the image is compared with those in a database (DB).…”
Section: Exponential Moving Averagementioning
confidence: 99%
“…Besides, most of these approaches require initial robot position to be known at least approximately, hence cannot solve the lost robot problem. We will develop a more robust and effective alternative, which is offered by set membership estimation and data fusion techniques that work in the bounded-error framework [5], [6]. These techniques can operate efficiently with sparse, asynchronous and heterogeneous measurements while being robust to the presence of non-consistent measurements, inaccuracy in environment modelling, and drift and inaccuracy in the robot evolution model.…”
Section: B Internet-based Indoors Localization Technologiesmentioning
confidence: 99%