Copyright © 2006 Hindawi Publishing Corporation. This is an open access article distributed under the
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Abstract
This paper presents an aided dead-reckoning navigation structure
and signal processing algorithms for self localization of an
autonomous mobile device by fusing pedestrian dead reckoning and
WiFi signal strength measurements. WiFi and inertial navigation
systems (INS) are used for positioning and attitude determination
in a wide range of applications. Over the last few years, a number
of low-cost inertial sensors have become available. Although they
exhibit large errors, WiFi measurements can be used to correct the
drift weakening the navigation based on this technology. On the
other hand, INS sensors can interact with the WiFi positioning
system as they provide high-accuracy real-time navigation. A
structure based on a Kalman filter and a particle filter is
proposed. It fuses the heterogeneous information coming from those
two independent technologies. Finally, the benefits of the
proposed architecture are evaluated and compared with the pure
WiFi and INS positioning systems.