Published in

MDPI, Energies, 4(14), p. 924, 2021

DOI: 10.3390/en14040924

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Acceleration Feature Extraction of Human Body Based on Wearable Devices

Journal article published in 2021 by Zhenzhen Huang, Qiang Niu, Ilsun You ORCID, Giovanni Pau ORCID
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Wearable devices used for human body monitoring has broad applications in smart home, sports, security and other fields. Wearable devices provide an extremely convenient way to collect a large amount of human motion data. In this paper, the human body acceleration feature extraction method based on wearable devices is studied. Firstly, Butterworth filter is used to filter the data. Then, in order to ensure the extracted feature value more accurately, it is necessary to remove the abnormal data in the source. This paper combines Kalman filter algorithm with a genetic algorithm and use the genetic algorithm to code the parameters of the Kalman filter algorithm. We use Standard Deviation (SD), Interval of Peaks (IoP) and Difference between Adjacent Peaks and Troughs (DAPT) to analyze seven kinds of acceleration. At last, SisFall data set, which is a globally available data set for study and experiments, is used for experiments to verify the effectiveness of our method. Based on simulation results, we can conclude that our method can distinguish different activity clearly.