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Using context-aware sub sorting of received signal strength fingerprints for indoor localisation
Author(s) -
Montserrat Ros,
Brendan Schoots,
Matthew D’Souza
Publication year - 2012
Publication title -
research online (university of wollongong)
Language(s) - English
Resource type - Conference proceedings
ISBN - 978-1-4673-2391-8
DOI - 10.1109/icspcs.2012.6507957
Subject(s) - computer science , fingerprint (computing) , fingerprint recognition , received signal strength indication , context (archaeology) , wireless , real time computing , wireless network , computer network , channel (broadcasting) , artificial intelligence , telecommunications , paleontology , biology
Mobile indoor localisation has numerous uses for logistics, health, sport and social networking applications. Current wireless localisation systems experience reliability difficulties while operating within indoor environments due to interference caused by the presence of metallic infrastructure. Current position localisation use wireless channel propagation characteristics, such as RF receive signal strength to localise a user's position, which is subject to interference. To overcome this, we developed a Fingerprint Context Aware Partitioning tracking model for tracking people within a building. The Fingerprint Context Aware Partitioning tracking model used received RF signal strength fingerprinting, combined with localised context aware information about the user's immediate indoor environment surroundings. We also present an inexpensive and robust wireless localisation network that can track the location of users in an indoor environment, using the Zigbee/802.15.4 wireless communications protocol. The wireless localisation network used reference nodes placed at known positions in a building. The reference nodes are used by mobile nodes, carried by users to localise their position. We found that the Fingerprint Context Aware Partitioning model had improved performance than using only multilateration, in locations that were not in range of multiple reference nodes. Further work includes investigating how multiple mobile nodes can be used by Fingerprint Context Aware Partition model to improve position accuracy.

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