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Robust driver heartbeat estimation: A q-Hurst exponent based automatic sensor change with interactive multi-model EKF

机译:可靠的驾驶员心跳估计:基于q-Hurst指数的交互式多模型EKF,传感器自动更换

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Preventing car accidents by monitoring the driver's physiological parameters is of high importance. However, existing measurement methods are not robust to driver's body movements. In this paper, a system that estimates the heartbeat from the seat embedded piezoelectric sensors, and that is robust to strong body movements is presented. Multifractal q-Hurst exponents are used within a classifier to predict the most probable best sensor signal to be used in an Interactive Multi-Model Extended Kalman Filter pulsation estimation procedure. The car vibration noise is reduced using an autoregressive exogenous model to predict the noise on sensors. The performance of the proposed system was evaluated on real driving data up to 100 km/h and with slaloms at high speed. It is shown that this method improves by 36.7% the pulsation estimation under strong body movement compared to static sensor pulsation estimation and appears to provide reliable pulsation variability information for top-level analysis of drowsiness or other conditions.
机译:通过监视驾驶员的生理参数来预防车祸非常重要。但是,现有的测量方法对驾驶员的身体运动并不稳健。在本文中,提出了一种系统,该系统可从座椅嵌入式压电传感器估算心跳,并且对强壮的身体运动具有鲁棒性。在分类器内使用多重分形q-Hurst指数来预测将在交互式多模型扩展卡尔曼滤波器脉动估计程序中使用的最可能的最佳传感器信号。使用自回归外生模型预测传感器上的噪声,可以降低汽车的振动噪声。所建议系统的性能是根据高达100 km / h的实际驾驶数据并以激流回旋以高速进行评估的。结果表明,与静态传感器的脉动估计相比,该方法在强壮的身体运动下的脉动估计提高了36.7%,并且似乎为困倦或其他情况的高级分析提供了可靠的脉动变异性信息。

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