IEEE Trans Biomed Circuits Syst. 2021 Feb;15(1):111-121. doi: 10.1109/TBCAS.2021.3053602. Epub 2021 Mar 30.
Sleep posture, as a crucial index for sleep quality assessment, has been widely studied in sleep analysis. In this paper, an unobtrusive smart mat system based on a dense flexible sensor array and printed electrodes along with an algorithmic framework for sleep posture recognition is proposed. With the dense flexible sensor array, the system offers a comfortable and high-resolution solution for long-term pressure sensing. Meanwhile, compared to other methods, it reduces production costs and computational complexity with a smaller area of the mat and improves portability with fewer sensors. To distinguish the sleep posture, the algorithmic framework that includes preprocessing and Deep Residual Networks (ResNet) is developed. With the ResNet, the proposed system can omit the complex hand-crafted feature extraction process and provide compelling performance. The feasibility and reliability of the proposed system were evaluated on seventeen subjects. Experimental results exhibit that the accuracy of the short-term test is up to 95.08% and the overnight sleep study is up to 86.35% for four categories (supine, prone, right, and left) classification, which outperform the most of state-of-the-art studies. With the promising results, the proposed system showed great potential in applications like sleep studies, prevention of pressure ulcers, etc.
睡眠姿势作为睡眠质量评估的一个关键指标,在睡眠分析中得到了广泛的研究。本文提出了一种基于密集柔性传感器阵列和印刷电极的非侵入式智能垫系统以及一种睡眠姿势识别算法框架。该系统采用密集柔性传感器阵列,为长期压力感应提供了舒适且高分辨率的解决方案。与其他方法相比,它减小了垫子的面积,降低了生产成本和计算复杂度,提高了便携性,使用的传感器更少。为了区分睡眠姿势,开发了包括预处理和深度残差网络(ResNet)的算法框架。通过 ResNet,所提出的系统可以省略复杂的手工特征提取过程,并提供出色的性能。在十七名受试者上评估了所提出系统的可行性和可靠性。实验结果表明,短期测试的准确率高达 95.08%,对于四类(仰卧、俯卧、右侧和左侧)分类的夜间睡眠研究的准确率高达 86.35%,优于大多数最先进的研究。所提出的系统具有良好的结果,在睡眠研究、预防压疮等应用中具有很大的潜力。