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Assessing the Performance of Sensor Fusion Methods: Application to Magnetic-Inertial-Based Human Body Tracking

机译:评估传感器融合方法的性能:在基于磁惯性的人体跟踪中的应用

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摘要

Information from complementary and redundant sensors are often combined within sensor fusion algorithms to obtain a single accurate observation of the system at hand. However, measurements from each sensor are characterized by uncertainties. When multiple data are fused, it is often unclear how all these uncertainties interact and influence the overall performance of the sensor fusion algorithm. To address this issue, a benchmarking procedure is presented, where simulated and real data are combined in different scenarios in order to quantify how each sensor’s uncertainties influence the accuracy of the final result. The proposed procedure was applied to the estimation of the pelvis orientation using a waist-worn magnetic-inertial measurement unit. Ground-truth data were obtained from a stereophotogrammetric system and used to obtain simulated data. Two Kalman-based sensor fusion algorithms were submitted to the proposed benchmarking procedure. For the considered application, gyroscope uncertainties proved to be the main error source in orientation estimation accuracy for both tested algorithms. Moreover, although different performances were obtained using simulated data, these differences became negligible when real data were considered. The outcome of this evaluation may be useful both to improve the design of new sensor fusion methods and to drive the algorithm tuning process.
机译:来自互补传感器和冗余传感器的信息通常结合在传感器融合算法中,以获得对当前系统的单个准确观察。但是,每个传感器的测量都具有不确定性。当融合多个数据时,通常不清楚所有这些不确定性如何相互作用并影响传感器融合算法的整体性能。为了解决这个问题,提出了一种基准测试程序,其中将模拟和真实数据在不同情况下进行组合,以便量化每个传感器的不确定性如何影响最终结果的准确性。拟议的程序应用于腰围惯性测量单元的骨盆方向估计。地面数据从立体摄影测量系统获得,并用于获得模拟数据。两种基于卡尔曼的传感器融合算法已提交给建议的基准测试程序。对于所考虑的应用,陀螺仪的不确定性被证明是两种测试算法在方向估计精度上的主要误差来源。而且,尽管使用模拟数据获得了不同的性能,但是当考虑实际数据时,这些差异可以忽略不计。评估的结果可能对改进新的传感器融合方法的设计以及驱动算法调整过程均有用。

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