GPPS: A Gaussian Process Positioning System for Cellular Networks
A. Schwaighofer, M. Grigoras, V. Tresp, and C. Hoffmann
Abstract:
In this article, we present a novel approach to solving the localization
problem in cellular networks. The goal is to estimate a mobile user's
position, based on measurements of the signal strengths received from network
base stations. Our solution works by building Gaussian process models for the
distribution of signal strengths, as obtained in a series of calibration
measurements. In the localization stage, the user's position can be estimated
by maximizing the likelihood of received signal strengths with respect to the
position. We investigate the accuracy of the proposed approach on data
obtained within a large indoor cellular network.
Reference: A. Schwaighofer, M. Grigoras, V. Tresp, and C. Hoffmann.
GPPS: A Gaussian process positioning system for cellular networks.
In S. Thrun, L. Saul, and B. Schoelkopf, editors, Advances in Neural
Information Processing Systems 16, 2004.