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Outlier Detection in GNSS Pseudo-Range/Doppler Measurements for Robust Localization

机译:用于稳健定位的GNSS伪距/多普勒测量中的异常检测

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In urban areas or space-constrained environments with obstacles, vehicle localization using Global Navigation Satellite System (GNSS) data is hindered by Non-Line Of Sight (NLOS) and multipath receptions. These phenomena induce faulty data that disrupt the precise localization of the GNSS receiver. In this study, we detect the outliers among the observations, Pseudo-Range (PR) and/or Doppler measurements, and we evaluate how discarding them improves the localization. We specify a contrario modeling for GNSS raw data to derive an algorithm that partitions the dataset between inliers and outliers. Then, only the inlier data are considered in the localization process performed either through a classical Particle Filter (PF) or a Rao-Blackwellization (RB) approach. Both localization algorithms exclusively use GNSS data, but they differ by the way Doppler measurements are processed. An experiment has been performed with a GPS receiver aboard a vehicle. Results show that the proposed algorithms are able to detect the ‘outliers’ in the raw data while being robust to non-Gaussian noise and to intermittent satellite blockage. We compare the performance results achieved either estimating only PR outliers or estimating both PR and Doppler outliers. The best localization is achieved using the RB approach coupled with PR-Doppler outlier estimation.
机译:在市区或有障碍物的空间受限的环境中,非视线(NLOS)和多径接收会阻碍使用全球导航卫星系统(GNSS)数据进行车辆定位。这些现象导致错误的数据,破坏了GNSS接收器的精确定位。在这项研究中,我们检测到观测值中的离群值,伪距(PR)和/或多普勒测量,并且我们评估了丢弃它们如何改善定位。我们为GNSS原始数据指定了一个相反的模型,以得出一种算法,该算法在内部数据和异常数据之间划分数据集。然后,在通过经典粒子滤波器(PF)或Rao-Blackwellization(RB)方法执行的定位过程中,仅考虑内部数据。两种定位算法仅使用GNSS数据,但是它们在处理多普勒测量的方式上有所不同。已经用车辆上的GPS接收器进行了实验。结果表明,所提出的算法能够检测原始数据中的“异常值”,同时对非高斯噪声和间歇性卫星阻塞具有鲁棒性。我们比较仅估计PR离群值或估计PR和多普勒离群值所获得的性能结果。使用RB方法结合PR多普勒离群值估计可以实现最佳定位。

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