Non-contact Respiratory Abnormality Monitoring: A Hybrid Empirical Mode and Variational Mode Decomposition Approach with Software Defined Radio and Deep Learning
IEEE Sensors Journal(2025)
Abstract
Respiratory signals are essential vital signs for monitoring conditions, where interrupted respiration can greatly affect health. Software-defined radio (SDR) offers a nonintrusive method for detecting respiratory patterns by observing minor chest wall movements. However, impediments such as disruption, DC components, and respiratory harmonics impede precise identification of abnormal respiratory patterns like sleep apnea events. The proposed respiratory monitoring system employs SDR technology while utilizing EMD and VMD signal processing methods for effective signal separation and better mode decompositions with Kalman filtering for DC component management. Signal separation becomes better while mode mixing reduction and DC component handling improve efficiently through the integration of a Kalman filter. The proposed system performs real-time respiratory signal extraction while maintaining sub-second processing latency while it achieves high accuracy for recognizing normal, slow and fast breathing patterns with sleep apnea event detection capabilities. Performance evaluation using Bland-Altman analysis indicates strong agreement with reference respiratory rates. The CNN-BiLSTM model, employed for identifying respiratory patterns, achieved an exceptional performance with an accuracy of 99.4%. This contactless approach demonstrates the feasibility of continuous respiratory pattern detection and presents a feasible application in clinical diagnosis and health-monitoring systems.
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Key words
Non-contact health monitoring,respiratory abnormalities detection,EMD,VMD,SDR,deep learning,signal processing,biomedical signals
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