Machine learning based indoor localization using wi-fi fingerprinting

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Abstract

The aim of indoor localization is to locate the objects inside a location wirelessly. This paper reports the models that predict the location along with floor and coordinates from the WAPs (Web Access Points) signal strengths of a user who connects to the internet at a specific location which had three locations. Starting with the cleaning of data, then assigning attributes into proper data types, making subset of dataset for each location, examining each column, and normalizing WAPs rows in order to build models. Different algorithms have been used to predict the location, floor, and coordinates of a logged in user. The models that have been used in this paper are k-Nearest Neighbor (k-NN) for location prediction, random forest for floor prediction and regression with k-NN for coordinate prediction.

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Wadhwa, S., Rai, P., & Kaushik, R. (2019). Machine learning based indoor localization using wi-fi fingerprinting. International Journal of Recent Technology and Engineering, 8(3), 502–506. https://doi.org/10.35940/ijrte.A2133.098319

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