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An algorithm for three-dimensional indoor positioning based on Bayesian inference, Fingerprinting method and Wi-Fi technology

( Vol-4,Issue-10,October 2017 ) OPEN ACCESS
Author(s):

Hitalo Nascimento, Francisco R.P. Cavalcanti, Emanuel B. Rodrigues, Antônio R. Paiva

Keywords:

3D Indoor positioning, Fingerprint, Naive Bayes, k-means, Cost 231 multi-wal.

Abstract:

Wireless indoor positioning systems have been shown to be very useful in many applications and have been the subject of a considerable amount of research, mainly concerning the two-dimensional (2D) case. However, in many practical situations it is necessary to determine the three-dimensional (3D) coordinates of an object or user. In this paper, a hybrid algorithm for implementation in a 3D indoor positioning system is proposed. This algorithm is implemented by using a fingerprinting technique based on both the k-means and naive Bayes methods, and uses the received signal strength (RSS) as an input parameter. In addition, a comparison of the main algorithms discussed in previous research papers and the proposed algorithm is presented. Indoor positioning experiments were conducted in a typical building with two floors (180m2) and four access points (APs). The proposed algorithm exhibited a better performance than that of other algorithms, with a mean error around 1.80m.

ijaers doi crossref DOI:

10.22161/ijaers.4.10.26

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