Stefan Haag, B. Duraisamy, Constantin Blessing, Reiner Marchthaler, W. Koch, M. Fritzsche, J. Dickmann
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引用次数: 1
Abstract
This paper presents the Online Adaptive Fuser: OAFuser, a novel method for online adaptive estimation of motion and measurement uncertainties for efficient tracking and fusion by applying a system of several estimators for ongoing noise along with the conventional state and state covariance estimation. In our system, process and measurement noises are estimated with steady-state filters to obtain combined measurement noise and process noise estimators for all sensors in order to obtain state estimation with a linear Minimum Mean Square Error (MMSE) estimator and accelerating the system’s performance. The proposed adaptive tracking and fusion system was tested based on high fidelity simulation data and several real-world scenarios for automotive radar, where ground truth data is available for evaluation. We demonstrate the proposed method’s accuracy and efficiency in a challenging, highly dynamic scenario where our system is benchmarked with Multiple Model filter in terms of error statistics and run time performance.
本文提出了一种在线自适应Fuser: OAFuser,它是一种在线自适应估计运动和测量不确定性的新方法,用于有效的跟踪和融合,该方法采用了一个由多个持续噪声估计器组成的系统以及传统的状态和状态协方差估计。在我们的系统中,使用稳态滤波器对过程和测量噪声进行估计,得到所有传感器的测量噪声和过程噪声的组合估计,从而获得线性最小均方误差(MMSE)估计器的状态估计,从而提高系统的性能。提出的自适应跟踪和融合系统基于高保真仿真数据和汽车雷达的几个真实场景进行了测试,其中地面真实数据可用于评估。我们在一个具有挑战性的、高度动态的场景中展示了所提出方法的准确性和效率,在这个场景中,我们的系统在错误统计和运行时性能方面使用Multiple Model filter进行基准测试。