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Discrete human activity recognition and fall detection by combining fmcw radar data of heterogeneous environments for independent assistive living

  • ,
  • Syed Yaseen Shah
    ,
  • Syed Aziz Shah
    ,
  • Jawad Ahmad
    ,
  • Abdullah Alhumaidi Alotaibi
    ,
  • Turke Althobaiti
  • Coventry University
    ,
  • Glasgow Caledonian University
    ,
  • Edinburgh Napier University
    ,
  • Taif University
    ,
  • Northern Borders University
    ,
  • University of the West of Scotland
Research Output: Contribution to journal Article Peer-review

Open access

Sustainable Development Goals

  • SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well

Abstract

Human activity monitoring is essential for a variety of applications in many fields, particularly healthcare. The goal of this research work is to develop a system that can effectively detect fall/collapse and classify other discrete daily living activities such as sitting, standing, walking, drinking, and bending. For this paper, a publicly accessible dataset is employed, which is captured at various geographical locations using a 5.8 GHz Frequency-Modulated Continuous-Wave (FMCW) RADAR. A total of ninety-nine participants, including young and elderly individuals, took part in the experimental campaign. During data acquisition, each aforementioned activity was recorded for 5–10 s. Through the obtained data, we generated the micro-doppler signatures using short-time Fourier transform by exploiting MATLAB tools. Subsequently, the micro-doppler signatures are validated, trained, and tested using a state-of-the-art deep learning algorithm called Residual Neural Network or ResNet. The ResNet classifier is developed in Python, which is utilised to classify six distinct human activities in this study. Furthermore, the metrics used to analyse the trained model’s performance are precision, recall, F1-score, classification accuracy, and confusion matrix. To test the resilience of the proposed method, two separate experiments are carried out. The trained ResNet models are put to the test by subject-independent scenarios and unseen data of the above-mentioned human activities at diverse geographical spaces. The experimental results showed that ResNet detected the falling and rest of the daily living human activities with decent accuracy.

Publication Information

Output type

Research Output: Contribution to journal Article Peer-review

Original language

English

Article number

2237

Journal (Volume, Issue Number)

Electronics (Switzerland) (Volume 10, Issue 18)

Publication milestones

  • Accepted/In press - 10/09/2021
  • Published - 12/09/2021

Publication status

Published - 12/09/2021

ISSN

2079-9292

External Publication IDs

  • Scopus: 85114681735