Indoor positioning system using beacon devices for practical pedestrian navigation on mobile phone

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Abstract

In this paper, we propose a positioning system for indoor pedestrian navigation services using mobile phones. Position information services with a Global Positioning System (GPS) are widely used for car navigation and portable navigation. Their navigation systems facilitate development of industry and increase the convenience of civil life. However, such systems and services are available only for locations in which satellite signals can be received because users' self-positions are computed using GPS. Therefore, we developed a system for indoor environments, operating with a user's mobile terminal and battery-driven beacon devices in a server-less environment. Moreover, to provide convenient services using position information indoors, we developed an indoor navigation system that is useful in commercial facilities and office buildings. The system consists of smart phone and license-free radio beacon devices that can be driven with little electric power. In our proposed method, probabilistic estimation algorithms are applied to estimate self-positions in indoor locations, such as those where it is impossible to receive GPS signals. Feature of the system is that 2.5-dimensional indoor positioning is possible to calculate with low computational power device such as mobile phone. The system works autonomously, i.e., the user's device receives wireless beacon signals from the surrounding environment and can thereby detect a user's position independently from the mobile terminal, thereby obviating server-side computation. © 2009 Springer Berlin Heidelberg.

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APA

Inoue, Y., Sashima, A., & Kurumatani, K. (2009). Indoor positioning system using beacon devices for practical pedestrian navigation on mobile phone. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 5585 LNCS, pp. 251–265). https://doi.org/10.1007/978-3-642-02830-4_20

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