4.8 Article

Real-Time and Cost-Effective Smart Mat System Based on Frequency Channel Selection for Sleep Posture Recognition in IoMT

Journal

IEEE INTERNET OF THINGS JOURNAL
Volume 9, Issue 21, Pages 21421-21431

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2022.3181599

Keywords

Real-time systems; Classification algorithms; Sleep apnea; Data acquisition; Medical services; Embedded systems; Complexity theory; Frequency channel selection; Internet of Medical Things (IoMT); low cost; real time; sleep posture recognition; smart mat system

Funding

  1. Shanghai Municipal Science and Technology Major Project [2017SHZDZX01]
  2. Shanghai Municipal Science and Technology International Research and Development Collaboration Project [20510710500]
  3. National Natural Science Foundation of China [62001118]
  4. Shanghai Committee of Science and Technology [20S31903900]

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This article proposes a real-time and low-cost smart mat system that recognizes sleep postures through frequency channel selection. The feasibility and reliability of the system are evaluated through experiments, showing high accuracy, small model size, and low runtime. The proposed system has the potential to contribute to the development of fast, convenient, and low-cost sleep posture recognition products for IoMT.
Sleep posture, which affects the quality of sleep and could lead to medical conditions, such as pressure ulcers, is a key metric for sleep analysis in Internet of Medical Things (IoMT). In this article, a real-time and low-cost smart mat system for sleep posture recognition based on frequency channel selection is proposed. The system can recognize postures unobtrusively with a dense flexible sensor array. In addition, to enable real-time recognition with a relatively low-cost STM32 processor system, a lightweight algorithm that includes frequency channel selection, model pretraining, and real-time classification is proposed. Through a series of short-term and overnight experiments with 21 subjects, the feasibility and reliability of the proposed system were evaluated. Experimental results show that the accuracy of the short-term experiment is up to 95.43% and of the overnight experiment is up to 86.80% for four posture categories (supine, prone, right, and left) classification. The model size is just 56 kB which is much smaller than other methods. The runtime of the complete algorithm is about 6 ms with a low-power STM32 embedded system, which shows the system's ability to provide real-time posture recognition. As an edge device, the proposed system could lead to the development of fast, convenient, and low-cost sleep posture recognition products for IoMT.

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