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Frequency-Modulated Continuous Wave Radar Respiratory Pattern Detection Technology Based on Multifeature
Author(s) -
Qisong Wang,
Zhening Dong,
Dan Liu,
Tianao Cao,
Meiyan Zhang,
Runqiao Liu,
Xiao-Cong Zhong,
Jinwei Sun
Publication year - 2021
Publication title -
journal of healthcare engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.509
H-Index - 29
eISSN - 2040-2309
pISSN - 2040-2295
DOI - 10.1155/2021/9376662
Subject(s) - standard deviation , radar , support vector machine , respiratory monitoring , computer science , artificial intelligence , signal (programming language) , apnea , pattern recognition (psychology) , respiratory rate , respiratory system , intensity (physics) , energy (signal processing) , acoustics , mathematics , physics , statistics , medicine , telecommunications , optics , heart rate , blood pressure , programming language
Respiratory diseases including apnea are often accompanied by abnormal respiratory depth, frequency, and rhythm. If different abnormal respiratory patterns can be detected and recorded, with their depth, frequency, and rhythm analyzed, the detection and diagnosis of respiratory diseases can be achieved. High-frequency millimeter-wave radar (76–81 GHz) has low environmental impact, high accuracy, and small volume, which is more suitable for respiratory signal detection and recognition compared with other contact equipment. In this paper, the experimental platform of frequency-modulated continuous wave (FMCW) radar was built at first, realizing the noncontact measurement of vital signs. Secondly, the energy intensity and threshold of respiration signal during each period were calculated by using the rectangular window, and the accurate judgment of apnea was realized via numerical comparison. Thirdly, the features of respiratory and heart rate signals, the number of peaks and valleys, the difference between peaks and valleys, the average and the standard deviation of normalized short-term energy, and the average and the standard deviation and the minimum of instantaneous frequency, were extracted and analyzed. Finally, support vector machine (SVM) and K-nearest neighbor (KNN) were used to classify the extracted features, and the accuracy was 98.25% and 88.75%, respectively. The classification and recognition of respiratory patterns have been successfully realized.

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