DOI QR코드

DOI QR Code

Design and Implementation of Smart Healthcare Monitoring System Using Bio-Signals

생체 신호를 이용한 스마트 헬스케어 모니터링 시스템 설계 및 구현

  • Yoo, So-Wol (Department of Computer Science and Statistics, Graduate School of Chosun University) ;
  • Bae, Sang-Hyun (Department of Computer Science and Statistics, Graduate School of Chosun University)
  • Received : 2017.09.30
  • Accepted : 2017.10.17
  • Published : 2017.10.30

Abstract

This paper intend to implement monitoring systems for individual customized diagnostics to maintain ongoing disease management to promote human health. Analyze the threshold of a measured biological signal using a number of measuring sensors. Performance assessment revealed that the SVM algorithm for bio-signal analysis showed an average error rate of 2 %. The accuracy of the classification is 97.2%, and reduced the maximum of 19.2% of the storage space when you split the window into 5,000 pieces. Out of the total 5,000 bio-signals, 84 results showed that results from the system were differently the results of the expert's diagnosis and showed about 98 % accuracy. However, the results of the monitoring system did not occur when the results of the monitoring system were lower than that of experts. And About 98% accuracy was shown.

인간의 건강에 대한 관심 증가에 맞춘 상시적인 질병 관리를 위해 다수 개의 측정센서를 이용하여 측정된 생체 신호를 융합한 임계값을 분석하여 개개인의 맞춤형 진단을 위한 모니터링 시스템을 구현하고자 한다. 성능평가 결과 생체 신호의 분석을 위한 SVM 알고리즘은 평균 2%의 오차율이 나타났으며, 윈도우의 크기를 5000으로 분할했을 때 저장 공간의 최대 19.2%를 축소함으로써 효과적임을 보였다. 분류의 정확도는 윈도우 크기를 5000으로 분할했을 때 97.2%로 가장 높은 정확도를 보였다. 또한 총 5000개의 생체 신호 집합의 분석 결과 중 84개의 결과가 다르게 나왔으나 시스템으로부터의 결과가 전문가의 진단 결과보다 더 낮은 경우는 발생하지 않았으며, 약 98%의 정확도를 보였다.

Keywords

References

  1. Hun Jin, "The Smart Healthcare Trend and Technology", The Magazine of the IEEE 44(2), pp.17-17(1 pages), February, 2017.
  2. Jeong-Rae Kim, "Overview of Smart Healthcare Technology", The Magazine of the IEEE 44(2), pp.18-23, February, 2017.
  3. Kimberly Tuck, "Tilt Sensing Using Linear Accelerometers," Freescale Semiconductor AN3461, 2007.
  4. Y. Liu, R. Wang, H. Huang, Y. Zeng, and H. He, "Applying support vector machine to P2P traffic identification with smooth processing," IEEE Int. Conf. on Signal Processing, Vol.3, pp.16-20, 2006.
  5. Zhuang, D., Zhang, B., Yang, Q., Yan, J., Chen, Z., & Chen, Y. 2005. "Efficient Text Classification by Weighted Proximal SVM." Proceedings of the Fifth IEEE International Conference on Data Mining: 538-545.

Cited by

  1. Implementation of an oneM2M-based Health Monitoring Platform for Older Adults vol.22, pp.9, 2017, https://doi.org/10.9728/dcs.2021.22.9.1451