Detection of Multiple Respiration Patterns Based on 1D SNN from Continuous Human Breathing Signals and the Range Classification Method for Each Respiration Pattern
Author:
Hong Jin-Woo1, Kim Seong-Hoon2, Han Gi-Tae1ORCID
Affiliation:
1. Department of Computer Engineering, Gachon University, Seongnam 13120, Republic of Korea 2. Neowine Co., Ltd., Seongnam 13595, Republic of Korea
Abstract
Human respiratory information is being used as an important source of biometric information that can enable the analysis of health status in the healthcare domain. The analysis of the frequency or duration of a specific respiration pattern and the classification of respiration patterns in the corresponding section for a certain period of time are important for the utilization of respiratory information in various ways. Existing methods require window slide processing to classify sections for each respiration pattern from the breathing data for a certain time period. In this case, when multiple respiration patterns exist within one window, the recognition rate can be lowered. To solve this problem, a 1D Siamese neural network (SNN)-based human respiration pattern detection model and a merge-and-split algorithm for the classification of multiple respiration patterns in each region for all respiration sections are proposed in this study. When calculating the accuracy based on intersection over union (IOU) for the respiration range classification result for each pattern, the accuracy was found to be improved by approximately 19.3% compared with the existing deep neural network (DNN) and 12.4% compared with a 1D convolutional neural network (CNN). The accuracy of detection based on the simple respiration pattern was approximately 14.5% higher than that of the DNN and 5.3% higher than that of the 1D CNN.
Funder
a National Research Foundation of Korea
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference58 articles.
1. Automatic Pulmonary Auscultation Grading Diagnosis of Coronavirus Disease 2019 in China with Artificial Intelligence Algorithms: A Cohort Study;Zhu;Comput. Methods Programs Biomed.,2022 2. Liu, B., Wen, Z., Zhu, H., Lai, J., Wu, J., Ping, H., Liu, W., Yu, G., Zhang, J., and Liu, Z. (2022–1, January 27). Energy-Efficient Intelligent Pulmonary Auscultation for Post COVID-19 Era Wearable Monitoring Enabled by Two-Stage Hybrid Neural Network. Proceedings of the 2022 IEEE International Symposium on Circuits and Systems (ISCAS), Austin, TX, USA. 3. Tiew, P.Y., Thng, K.X., and Chotirmall, S.H. (2022). Clinical aspergillus Signatures in COPD and bronchiectasis. J. Fungi, 8. 4. Patient-reported outcomes while managing obstructive sleep apnea with oral appliances: A scoping review;Fagundes;J. Evid.-Based Dent. Pract.,2023 5. Rehman, M., Shah, R.A., Khan, M.B., Shah, S.A., AbuAli, N.A., Yang, X., Alomainy, A., Imran, M.A., and Abbasi, Q.H. (2021). Improving machine learning classification accuracy for breathing abnormalities by enhancing dataset. Sensors, 21.
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