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Robust vehicle localization based on multi-level sensor fusion and online parameter estimation

机译:基于多级传感器融合和在线参数估计的鲁棒车辆定位

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In this paper we present a novel vehicle tracking algorithm, which is based on multi-level sensor fusion of GPS (Global Positioning System) with Inertial Measurement Unit sensor data. It is shown that the robustness of the system to temporary dropouts of the GPS signal, which may occur due to limited visibility of satellites in narrow street canyons or tunnels, is greatly improved by sensor fusion. We further demonstrate how the observation and state noise covariances of the employed Kalman filters can be estimated alongside the filtering by an application of the Expectation-Maximization algorithm. The proposed time-variant multi-level Kalman filter is shown to outperform an Interacting Multiple Model approach while at the same time being computationally less demanding.
机译:在本文中,我们提出了一种新颖的车辆跟踪算法,该算法基于GPS(全球定位系统)与惯性测量单元传感器数据的多级传感器融合。结果表明,由于传感器融合,大大提高了系统对GPS信号暂时丢失的鲁棒性,这可能是由于狭窄街道峡谷或隧道中卫星的可见性有限而引起的。我们进一步展示了如何通过期望最大化算法的应用,与滤波一起估算所采用的卡尔曼滤波器的观测和状态噪声协方差。所提出的时变多级卡尔曼滤波器表现出优于交互多模型方法,同时在计算上的要求更低。

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