Sensors (Jul 2020)

An Energy-Efficient Fall Detection Method Based on FD-DNN for Elderly People

  • Leyuan Liu,
  • Yibin Hou,
  • Jian He,
  • Jonathan Lungu,
  • Ruihai Dong

DOI
https://doi.org/10.3390/s20154192
Journal volume & issue
Vol. 20, no. 15
p. 4192

Abstract

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A fall detection module is an important component of community-based care for the elderly to reduce their health risk. It requires the accuracy of detections as well as maintains energy saving. In order to meet the above requirements, a sensing module-integrated energy-efficient sensor was developed which can sense and cache the data of human activity in sleep mode, and an interrupt-driven algorithm is proposed to transmit the data to a server integrated with ZigBee. Secondly, a deep neural network for fall detection (FD-DNN) running on the server is carefully designed to detect falls accurately. FD-DNN, which combines the convolutional neural networks (CNN) with long short-term memory (LSTM) algorithms, was tested on both with online and offline datasets. The experimental result shows that it takes advantage of CNN and LSTM, and achieved 99.17% fall detection accuracy, while its specificity and sensitivity are 99.94% and 94.09%, respectively. Meanwhile, it has the characteristics of low power consumption.

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