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  4. Accelerometer-based fall detection for smartphones
 
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2014
Conference Paper
Title

Accelerometer-based fall detection for smartphones

Abstract
Falls are considered the main cause of fear and loss of independence among the elderly population and are also a major cause of morbidity, disability and health care utilization. In the majority of fall events external support is imperative in order to avoid major consequences. Therefore, the ability to automatically detect these fall events could help reducing the response time and significantly improve the prognosis of fall victims. This paper presents a unobtrusive smartphone based fall detection system that uses a combination of information derived from machine learning classification applied in a state machine algorithm. The data from the smartphone built-in accelerometer is continuously screened when the phone is in the user's belt or pocket. Upon the detection of a fall event, the user location is tracked and SMS and email notifications are sent to a set of contacts. The accuracy of the fall detection algorithm here proposed is near 97.5% for both the pocket and belt usage. In conclusion, the proposed solution can reliably detect fall events without disturbing the users with excessive false alarms, presenting also the advantage of not changing the user's routines, since no additional external sensors are required.
Author(s)
Aguiar, Bruno
Rocha, Tiago
Silva, Joana
Sousa, Ines
Mainwork
IEEE International Symposium on Medical Measurements and Applications, MeMeA 2014. Proceedings  
Conference
International Symposium on Medical Measurements and Applications (MeMeA) 2014  
DOI
10.1109/MeMeA.2014.6860110
Language
English
AICOS  
Keyword(s)
  • ADL

  • accelerometer

  • aging

  • classification algorithm

  • fall classification

  • fall detection

  • inertial sensors

  • smartphone

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