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Design and Implementation of Emergency Situation System through Multi Bio-signals

  • Ki-Young Lee
  • Min-Ki Lee
  • Kyu-Ho Kim
  • Myung-jae Lim
  • Jeong-Seok Kang
  • Hee-Woong Jeong
  • Young-Sik Na
Conference paper
Part of the Communications in Computer and Information Science book series (CCIS, volume 263)

Abstract

In this paper, We proposed a recognition system of user’s emergency situation by measuring several bio-signal and applying technology of Wearable Computing. The main features and contributions of the proposed system are as follows. First, input basic bio-signal is based on user’s movement, ECG-signal, and body temperature. Second, this allows you to process a variety of additional bio-signals in order to provide on-demand service to Users. Third, by analyzing each bio-signal’s data for emergency situation, it then determines the priorities and threshold that applies multiplex class SVMs and this offer an optimized algorithm for emergency situation. We evaluated performance of proposed system about bio-signal’s threshold and emergency situation decision algorithm. Finally it confirmed effectiveness.

Keywords

u-Healthcare Sensor Network Bio-signal Emergency Situation 

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Copyright information

© Springer-Verlag Berlin Heidelberg 2011

Authors and Affiliations

  • Ki-Young Lee
    • 1
  • Min-Ki Lee
    • 1
  • Kyu-Ho Kim
    • 1
  • Myung-jae Lim
    • 1
  • Jeong-Seok Kang
    • 1
  • Hee-Woong Jeong
    • 1
  • Young-Sik Na
    • 1
  1. 1.Department of Medical IT and MarketingEulji UniversitySeongnam-siKorea

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