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Enhancing System Performance through Objective Feature Scoring of Multiple Persons' Breathing Using Non-Contact RF

Mubashir Rehman1,2, Raza Ali Shah1, Najah Abed Abu Ali3

  • 1Department of Electrical Engineering, HITEC University, Taxila 47080, Pakistan.

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|February 11, 2023
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Summary
This summary is machine-generated.

Radio frequency (RF) sensing offers a non-contact method for breathing monitoring, enhancing healthcare with machine learning. Optimal feature scoring significantly improves accuracy in detecting breathing abnormalities, achieving up to 93.8%.

Keywords:
CSIRF sensingSDRmulti-person breathing

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Area of Science:

  • Biomedical Engineering
  • Health Informatics
  • Signal Processing

Background:

  • Breathing monitoring is crucial for health sensing and disease prediction.
  • Non-contact methods, particularly Radio Frequency (RF) sensing, are gaining traction for their privacy and convenience.
  • Machine learning (ML) systems are increasingly used for classifying breathing abnormalities, but data dimensionality poses challenges.

Purpose of the Study:

  • To develop an RF-based breathing monitoring system using software-defined radio (SDR) and channel state information (CSI).
  • To classify breathing abnormalities in single and multiple-person scenarios using ML algorithms.
  • To enhance system performance through optimal feature scoring.

Main Methods:

  • Utilized software-defined radio (SDR) and RF sensing to capture minute variations in wireless channel state information (CSI) caused by breathing.
  • Employed machine learning (ML) algorithms for the intelligent classification of breathing abnormalities.
  • Applied optimal feature scoring to refine the ML models and improve performance metrics.

Main Results:

  • The system successfully detected breathing abnormalities by analyzing CSI variations.
  • ML algorithms achieved accurate classification in both single and multi-person scenarios.
  • Optimal feature scoring led to significant improvements in accuracy, training time, and prediction speed, reaching up to 93.8% accuracy.

Conclusions:

  • RF-based breathing monitoring is an effective non-contact health sensing technology.
  • Optimal feature scoring is a viable solution for improving the performance of ML-based breathing abnormality classification systems.
  • This technology has the potential to reduce healthcare facility stress through intelligent digital health solutions.