Wearable Internet-of-Things platform for human activity recognition and health care

  • Iqbal, Asif
  • Ullah, Farman
  • Anwar, Hafeez
  • Rehman, Ata Ur
  • Shah, Kiran
  • ... Yoo, Sangjo
  • 외 3명
Citations

WEB OF SCIENCE

21
Citations

SCOPUS

28

초록

We propose to perform wearable sensors-based human physical activity recognition. This is further extended to an Internet-of-Things (IoT) platform which is based on a web-based application that integrates wearable sensors, smartphones, and activity recognition. To this end, a smartphone collects the data from wearable sensors and sends it to the server for processing and recognition of the physical activity. We collect a novel data set of 13 physical activities performed both indoor and outdoor. The participants are from both the genders where their number per activity varies. During these activities, the wearable sensors measure various body parameters via accelerometers, gyroscope, magnetometers, pressure, and temperature. These measurements and their statistical are then represented in features vectors that used to train and test supervised machine learning algorithms (classifiers) for activity recognition. On the given data set, we evaluate a number of widely known classifiers such random forests, support vector machine, and many others using the WEKA machine learning suite. Using the default settings of these classifiers in WEKA, we attain the highest overall classification accuracy of 90%. Consequently, such a recognition rate is encouraging, reliable, and effective to be used in the proposed platform.

키워드

Wearable Internet-of-Thingsactivity recognitionhealth and well-beingaccelerometergyroscopemagnetometertemperature sensorpressure sensorACCELEROMETER DATAPHYSICAL-ACTIVITYSENSORSMOBILESYSTEM
제목
Wearable Internet-of-Things platform for human activity recognition and health care
저자
Iqbal, AsifUllah, FarmanAnwar, HafeezRehman, Ata UrShah, KiranBaig, AyeshaAli, SajidYoo, SangjoKwak, Kyung Sup
DOI
10.1177/1550147720911561
발행일
2020-06
유형
Article
저널명
International Journal of Distributed Sensor Networks
16
6