An Energy-Efficient Multi-Tier Architecture for Fall Detection Using Smartphones.

Autor: Guvensan MA; Department of Computer Engineering, Yildiz Technical University, 34220 Istanbul, Turkey. irem@ce.yildiz.edu.tr., Kansiz AO; IT Department, Garanti Technology, 34212 Istanbul, Turkey. ahmetoguzkansiz@gmail.com., Camgoz NC; Centre for Vision, Speech and Signal Processing (CVSSP), University of Surrey, GU2 7XH Guildford, UK. n.camgoz@surrey.ac.uk., Turkmen HI; Department of Computer Engineering, Yildiz Technical University, 34220 Istanbul, Turkey. irem@ce.yildiz.edu.tr., Yavuz AG; Department of Computer Engineering, Yildiz Technical University, 34220 Istanbul, Turkey. gokhan@ce.yildiz.edu.tr., Karsligil ME; Department of Computer Engineering, Yildiz Technical University, 34220 Istanbul, Turkey. elif@ce.yildiz.edu.tr.
Jazyk: angličtina
Zdroj: Sensors (Basel, Switzerland) [Sensors (Basel)] 2017 Jun 23; Vol. 17 (7). Date of Electronic Publication: 2017 Jun 23.
DOI: 10.3390/s17071487
Abstrakt: Automatic detection of fall events is vital to providing fast medical assistance to the causality, particularly when the injury causes loss of consciousness. Optimization of the energy consumption of mobile applications, especially those which run 24/7 in the background, is essential for longer use of smartphones. In order to improve energy-efficiency without compromising on the fall detection performance, we propose a novel 3-tier architecture that combines simple thresholding methods with machine learning algorithms. The proposed method is implemented on a mobile application, called uSurvive, for Android smartphones. It runs as a background service and monitors the activities of a person in daily life and automatically sends a notification to the appropriate authorities and/or user defined contacts when it detects a fall. The performance of the proposed method was evaluated in terms of fall detection performance and energy consumption. Real life performance tests conducted on two different models of smartphone demonstrate that our 3-tier architecture with feature reduction could save up to 62% of energy compared to machine learning only solutions. In addition to this energy saving, the hybrid method has a 93% of accuracy, which is superior to thresholding methods and better than machine learning only solutions.
Databáze: MEDLINE