A novel wearable respiratory and activity monitoring system using a hybrid hierarchical classification algorithm achieved an average accuracy of 97.22% for distinguishing 15 complex activities.
A novel multimodal wearable system accurately monitors breathing patterns and identifies human actions during daily activities.
OBJECTIVE: This study aims to understand breathing patterns during daily activities by developing a wearable respiratory and activity monitoring (WRAM) system. METHODS: A novel multimodal fusion architecture is proposed to calculate the respiratory and exercise parameters and simultaneously identify human actions. A hybrid hierarchical classification (HHC) algorithm combining deep learning and threshold-based methods is presented to distinguish 15 complex activities for accuracy enhancement and fast computation. A series of signal processing algorithms are utilized and integrated to calculate breathing and motion indices. The designed wireless communication structure achieves the interactions among chest bands, mobile devices, and the data processing center. RESULTS: The advantage of the proposed HHC method is evaluated by comparing the average accuracy (97.22%) and predictive time (0.0094 s) with machine learning and deep learning approaches. The nine breathing patterns during 15 activities were analyzed by investigating the data from 12 subjects. With 12 hours of naturalistic data collected from one participant, the WRAM system reports the breathing and exercise performance within the identified motions. The demonstration shows the ability of the WRAM system to monitor multiple users breathing and exercise status in real-time. CONCLUSION: The present system demonstrates the usefulness of the framework of breathing pattern monitoring during daily activities, which may be potentially used in healthcare. SIGNIFICANCE: The proposed multimodal based WRAM system offers new insights into the breathing function of exercise in action and presents a novel approach for precision medicine and health state monitoring.
Qi et al. (Tue,) conducted a other in Daily activities (n=12). Wearable respiratory and activity monitoring (WRAM) system vs. Machine learning and deep learning approaches was evaluated on Average accuracy for distinguishing 15 complex activities. A novel wearable respiratory and activity monitoring system using a hybrid hierarchical classification algorithm achieved an average accuracy of 97.22% for distinguishing 15 complex activities.
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