DocumentCode :
3659361
Title :
Efficient localization using different mean offset models in Gaussian processes
Author :
A. A. Golovan;A. A. Panyov;V. V. Kosyanchuk;A. S. Smirnov
Author_Institution :
Laboratory of Navigation and Control, Lomonosov Moscow State University, Moscow, Russia
fYear :
2014
Firstpage :
365
Lastpage :
374
Abstract :
Indoor positioning using wireless signal strength has become an area of highly active research. Many papers prior to this one have demonstrated how Gaussian processes can be used to generate a likelihood model for signal strength measurements. One advantage of Gaussian processes is the ability to efficiently calibrate devices by using SLAM technique. However, Gaussian process is, by default, a zero mean process, which doesn´t reflect the true nature of signal propagation. In many works, algorithms are modified to use a constant, non-zero mean offset. There is also a modification using a simple mean offset model where signal strength decreases linearly with the distance from the access point. In this paper, a log-distance radio propagation model as a mean offset model for Gaussian processes is proposed. This model was chosen since many works have demonstrated it´s a good correlation to experimental results. Amongst the three models described, the log-distance model provides the highest accuracy. Also a comparison was made with the k-nearest neighbor method and probabilistic histogram approach, showing the superiority of methods using Gaussian processes. All algorithms were optimized which made it possible to perform all calculations on a mobile phone in real time.
Keywords :
"Gaussian processes","Training data","Atmospheric measurements","Particle measurements","Position measurement","Predictive models","Particle filters"
Publisher :
ieee
Conference_Titel :
Indoor Positioning and Indoor Navigation (IPIN), 2014 International Conference on
Type :
conf
DOI :
10.1109/IPIN.2014.7275504
Filename :
7275504
Link To Document :
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