Recently, the positioning techniques based on
the IEEE 802.11 signal strength are becoming the dominant solutions in the mobile
device localization within indoor scenarios. Such solutions are characterized
by two main pitfalls that compromise their effective usage in real application
environments. First, during the calibration, a large amount of manual effort is
required for acquiring a massive collection of training samples. Second, the
positioning accuracy is directly related to the deployment of the wireless
access points into the workspace, which is extremely time-consuming and
requires human intervention. This paper presents an approach to reduce the
manual calibration and to optimize the positioning accuracy, by selecting the
best deployment schema of the wireless access points. The approach has been
implemented in a tool, which uses an analytical signal propagation model to
build the radio map of a given workspace, and exploits a multi-objective
genetic algorithm to identify the best access point’s placement pattern that
fits the required accuracy. A detailed experimental campaign is presented in
order to show the benefits achievable by the proposed approach
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