RF-based respiration disorders sensing and classification using machine algorithms
- Prisila Ishabakaki,
- Hira Hameed,
- Muhammad Farooq,
- ,
- Syed Aziz Shah,
- Muhammad Ali Imran
- University of Glasgow,
- Coventry University,
- Ajman University
Open access
Sustainable Development Goals
- SDG 3 Good Health and Well
Abstract
The advent of real-time wireless sensing technologies holds promise for revolutionising healthcare provision, particularly in incidences requiring continuous monitoring, such as Cardiovascular Diseases (CVD), heart attacks and other infectious diseases affecting the respiratory system. Leveraging Universal Software Radio Peripherals (USRP), this study proposes a Radio Frequency (RF) sensing approach based on experiments to capture respiration data qualitatively. The study methodology involves selecting the frequency subcarrier from USRP raw data, followed by noise removal, data smoothing, and normalisation. Subsequently, relevant features are extracted from the preprocessed data, facilitating the training of Machine Learning (ML) models to enable respiration disorder classification. A comprehensive evaluation of various ML algorithms reveals that Extremely Randomised Trees (ERT) and Multilayer Perceptron (MLP) outperform others in classifying RF-based respiration real-time data, achieving an outstanding accuracy of 100% with comparatively short training duration.
Publication Information
Output type
Original language
EnglishPages from-to (Number of pages)
Pages 1881-1882 (2 pages)Publication milestones
- Published - 30/09/2024
Publication status
Publisher
Institute of Electrical and Electronics Engineers Inc., United StatesPublication series
- Publication series name: IEEE Antennas and Propagation Society, AP-S International Symposium (Digest)
ISSN (Print): 1522-3965
ISBN (Electronic)
9798350369908External Publication IDs
- Scopus: 85207059288
