DEEP LEARNING APPROACHES FOR HUMAN ACTIVITY RECOGNITION USING WEARABLE TECHNOLOGY

  • Milica M Janković Univerzitet u Beogradu - Elektrotehnicki fakultet
  • Andrej Savić University of Belgrade - School of Electrical Engineering and Tecnalia Serbia
  • Marija Novičić University of Belgrade - School of Electrical Engineering
  • Mirjana B Popović University of Belgrade - School of Electrical Engineering

Sažetak


The need for long-term monitoring of individuals in their natural environment has initiated the development of a various number of wearable healthcare sensors for a wide range of applications: medical monitoring in clinical or home environments, physical activity assessment of athletes and recreators, baby monitoring in maternity hospitals and homes etc. Neural networks (NN) are data-driven type of modelling. NN learn from experience, without knowledge about the model of phenomenon, but knowing the desired „output” data for the training „input” data. The most promising concept of machine learning that involves NN is deep learning (DL) approach. The focus of this review is on approaches of DL for physiological activity recognition or human movement analysis purposes using wearable technologies. This review shows that deep learning techniques are useful tools for health condition prediction or overall monitoring of data streamed by wearable systems. Despite the considerable progress and wide field of applications, there are still some limitations and room for improvement of DL approaches for wearable healthcare systems which may lead to more robust and reliable technology for personalized healthcare.

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2018/10/27
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