Monte Carlo localization in dense multipath environments using UWB ranging

D. Jourdan, J. Deyst, M. Win, N. Roy
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引用次数: 122

Abstract

For most outdoor applications, systems such as GPS provide users with accurate position estimates. However, reliable range-based localization using radio signals in indoor or urban environments can be a problem due to multipath fading and line-of-sight (LOS) blockage. The measurement bias introduced by these delays causes significant localization error, even when using additional sensors such as an inertial measurement unit (IMU) to perform outlier rejection. We describe an algorithm for accurate indoor localization of a sensor in a network of known beacons. The sensor measures the range to the beacons using an Ultra-Wideband (UWB) signal and uses statistical inference to infer and correct for the bias due to LOS blockage in the range measurements. We show that a particle filter can be used to estimate the joint distribution over both pose and beacon biases. We use the particle filter estimation technique specifically to capture the non-linearity of transitions in the beacon bias as the sensor moves. Results using real-world and simulated data are presented.
蒙特卡罗定位在密集的多路径环境中使用超宽带测距
对于大多数户外应用,GPS等系统为用户提供准确的位置估计。然而,由于多径衰落和视线(LOS)阻塞,在室内或城市环境中使用无线电信号进行可靠的基于距离的定位可能会出现问题。由这些延迟引入的测量偏差会导致显著的定位误差,即使使用额外的传感器(如惯性测量单元(IMU))来执行异常值抑制。我们描述了一种在已知信标网络中精确定位传感器的算法。传感器使用超宽带(UWB)信号测量到信标的距离,并使用统计推断来推断和纠正由于LOS阻塞在距离测量中的偏差。我们证明了粒子滤波器可以用来估计姿态和信标偏差的联合分布。我们特别使用粒子滤波估计技术来捕捉传感器移动时信标偏置中过渡的非线性。给出了实际数据和模拟数据的结果。
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