A sensor fusion method was developed for vertical channel stabilization by fusing inertial measurements from an Inertial Measurement Unit (IMU) and pressure altitude measurements from a barometric altimeter integrated in the same device (baro-IMU). An Extended Kalman Filter (EKF) estimated the quaternion from the sensor frame to the navigation frame; the sensed specific force was rotated into the navigation frame and compensated for gravity, yielding the vertical linear acceleration; finally, a complementary filter driven by the vertical linear acceleration and the measured pressure altitude produced estimates of height and vertical velocity. A method was also developed to condition the measured pressure altitude using a whitening filter, which helped to remove the short-term correlation due to environment-dependent pressure changes from raw pressure altitude. The sensor fusion method was implemented to work on-line using data from a wireless baro-IMU and tested for the capability of tracking low-frequency small-amplitude vertical human-like motions that can be critical for stand-alone inertial sensor measurements. Validation tests were performed in different experimental conditions, namely no motion, free-fall motion, forced circular motion and squatting. Accurate on-line tracking of height and vertical velocity was achieved, giving confidence to the use of the sensor fusion method for tracking typical vertical human motions: velocity Root Mean Square Error (RMSE) was in the range 0.04-0.24 m/s; height RMSE was in the range 5-68 cm, with statistically significant performance gains when the whitening filter was used by the sensor fusion method to track relatively high-frequency vertical motions.
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机译:通过融合来自惯性测量单元(IMU)的惯性测量和来自集成在同一设备(baro-IMU)中的气压高度计的压力高度测量,开发了一种传感器融合方法来实现垂直通道稳定。扩展卡尔曼滤波器(EKF)估计了从传感器框架到导航框架的四元数;将感应到的比力旋转到导航框中并补偿重力,从而产生垂直线性加速度;最后,由垂直线性加速度和测得的压力高度驱动的互补滤波器产生了高度和垂直速度的估计值。还开发了一种使用美白过滤器来调节测得的压力高度的方法,该方法有助于消除由于与环境有关的压力变化而引起的短期相关性。传感器融合方法被实现为使用来自无线baro-IMU的数据进行在线工作,并测试了跟踪低频小幅度垂直人像运动的能力,这对于独立的惯性传感器测量而言至关重要。验证测试是在不同的实验条件下进行的,即不运动,自由落体运动,强制圆周运动和下蹲。实现了对高度和垂直速度的精确在线跟踪,这使人们有信心使用传感器融合方法来跟踪典型的垂直人体运动:速度均方根误差(RMSE)介于0.04-0.24 m / s;高度RMSE在5-68厘米范围内,当传感器融合方法使用增白滤波器跟踪相对高频的垂直运动时,具有统计上显着的性能提升。
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