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Robust respiration rate estimation using adaptive Kalman filtering with textile ECG sensor and accelerometer

机译:使用带有纺织ECG传感器和加速度计的自适应Kalman滤波进行鲁棒的呼吸率估计

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An adaptive Kalman filter-based fusion algorithm capable of estimating respiration rate for unobtrusive respiratory monitoring is proposed. Using both signal characteristics and a priori information, the Kalman filter is adaptively optimized to improve accuracy. Furthermore, the system is able to combine the respiration-related signals extracted from a textile ECG sensor and an accelerometer to create a single robust measurement. We measured derived respiratory rates and, when compared to a reference, found root-mean-square error of 2.11 breaths-per-minute (BrPM) while lying down, 2.30 BrPM while sitting, 5.97 BrPM while walking, and 5.98 BrPM while running. These results demonstrate that the proposed system is applicable to unobtrusive monitoring for various applications.
机译:提出了一种基于卡尔曼滤波的自适应融合算法,能够估计呼吸频率,用于非阻塞性呼吸监测。通过使用信号特征和先验信息,可以对卡尔曼滤波器进行自适应优化,以提高准确性。此外,该系统能够组合从纺织ECG传感器和加速度计提取的与呼吸有关的信号,以创建一个可靠的测量结果。我们测量了派生的呼吸频率,并与参考进行了比较,发现平躺时的均方根误差为2.11每分钟呼吸(BrPM),坐时为2.30 BrPM,步行时为5.97 BrPM,跑步时为5.98 BrPM。这些结果表明,所提出的系统适用于各种应用的非干扰性监视。

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