Posture tracking using a machine learning algorithm for a home AAL environment

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Abstract

The number of home office workers sitting for many hours is increasing. The sensor chair is tracking users’ sitting behavior which the help of pressure sensors and tries to avoid wrong postures which may cause diseases. The system provides live monitoring of the pressure distribution via web interface, as well as sitting posture prediction in real time. Posture analysis is realized through machine learning algorithm using a decision tree classifier that is compared to a random forest. Data acquisition and aggregation for the learning process happens with a mobile app adding users biometrical data and the taken sitting posture as label. The sensor chair is able to differentiate between an arched back, a neutral posture or a laid back position taken on the chair. The classifier achieves an accuracy of 97.4% on our test set and is comparable to the performance of the random forest with 98.9%.

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APA

Sandybekov, M., Grabow, C., Gaiduk, M., & Seepold, R. (2019). Posture tracking using a machine learning algorithm for a home AAL environment. In Smart Innovation, Systems and Technologies (Vol. 143, pp. 337–347). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-981-13-8303-8_31

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