Activity Recognition for Diabetic Patients Using a Smartphone.

Journal: Journal of medical systems
Published Date:

Abstract

Diabetes is a disease that has to be managed through appropriate lifestyle. Technology can help with this, particularly when it is designed so that it does not impose an additional burden on the patient. This paper presents an approach that combines machine-learning and symbolic reasoning to recognise high-level lifestyle activities using sensor data obtained primarily from the patient's smartphone. We compare five methods for machine-learning which differ in the amount of manually labelled data by the user, to investigate the trade-off between the labelling effort and recognition accuracy. In an evaluation on real-life data, the highest accuracy of 83.4 % was achieved by the MCAT method, which is capable of gradually adapting to each user.

Authors

  • Bozidara Cvetkovic
  • Vito Janko
    Jožef Stefan Institue, Jamova cesta 39, Slovenia.
  • Alfonso E Romero
    Royal Holloway, University of London, Egham, TW20 0EX, UK.
  • Özgür Kafalı
    North Carolina State University, Raleigh, NC, 27695-8206, USA.
  • Kostas Stathis
    Royal Holloway, University of London, Egham, TW20 0EX, UK.
  • Mitja Lustrek