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A Comparison of Machine Learning-Based Individual Mobility Classification Models Developed on Sensor Readings from Loosely Attached Smartphones (CROSBI ID 283727)

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Filjar, Renato ; Sklebar, Ivan ; Horvat, Marko A Comparison of Machine Learning-Based Individual Mobility Classification Models Developed on Sensor Readings from Loosely Attached Smartphones // Komunikácie, 22 (2020), 4; 153-162. doi: 10.26552/com.C.2020.4.153-162

Podaci o odgovornosti

Filjar, Renato ; Sklebar, Ivan ; Horvat, Marko

engleski

A Comparison of Machine Learning-Based Individual Mobility Classification Models Developed on Sensor Readings from Loosely Attached Smartphones

General mobility estimation is demanded for strategy, policy, systems and services developments and operations in transport, urban development and telecommunications. Here is proposed an individual motion readings collection with preserved privacy through loosely fit smartphones, as a novel sole inertial sensors use in commercial-grade smartphones for a wide population data collection, without the need for the new infrastructure and attaching devices. It is shown that the statistical learning-based models of individual mobility classification per means of transport are capable of overcoming the variance introduced by the proposed data collection method. The success of the proposed methodology in a small-scale experiment for the Individual Mobility Classification Model development, using selected statistical learning methods, is demonstrated.

mobility classification ; smartphone ; inertial sensor ; statistical learning

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Podaci o izdanju

22 (4)

2020.

153-162

objavljeno

1335-4205

10.26552/com.C.2020.4.153-162

Povezanost rada

Elektrotehnika, Računarstvo

Poveznice
Indeksiranost