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Practical Modeling of GNSS for Autonomous Vehicles in Urban Environments

机译:城市环境中自动驾驶汽车GNSS的实用建模

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摘要

Autonomous navigation technology is used in various applications, such as agricultural robots and autonomous vehicles. The key technology for autonomous navigation is ego-motion estimation, which uses various sensors. Wheel encoders and global navigation satellite systems (GNSSs) are widely used in localization for autonomous vehicles, and there are a few quantitative strategies for handling the information obtained through their sensors. In many cases, the modeling of uncertainty and sensor fusion depends on the experience of the researchers. In this study, we address the problem of quantitatively modeling uncertainty in the accumulated GNSS and in wheel encoder data accumulated in anonymous urban environments, collected using vehicles. We also address the problem of utilizing that data in ego-motion estimation. There are seven factors that determine the magnitude of the uncertainty of a GNSS sensor. Because it is impossible to measure each of these factors, in this study, the uncertainty of the GNSS sensor is expressed through three variables, and the exact uncertainty is calculated. Using the proposed method, the uncertainty of the sensor is quantitatively modeled and robust localization is performed in a real environment. The approach is validated through experiments in urban environments.
机译:自主导航技术被用于各种应用中,例如农业机器人和自动驾驶汽车。自主导航的关键技术是自我运动估计,它使用各种传感器。车轮编码器和全球导航卫星系统(GNSS)广泛用于自动驾驶汽车的本地化,并且有一些定量策略可用于处理通过其传感器获得的信息。在许多情况下,不确定性和传感器融合的建模取决于研究人员的经验。在这项研究中,我们解决了对使用汽车收集的GNSS累积和匿名城市环境中累积的车轮编码器数据中的不确定性进行定量建模的问题。我们还解决了在自我运动估计中利用这些数据的问题。有七个因素决定了GNSS传感器不确定性的大小。由于不可能测量所有这些因素,因此在本研究中,GNSS传感器的不确定度通过三个变量表示,并计算出确切的不确定度。使用提出的方法,对传感器的不确定性进行定量建模,并在实际环境中执行鲁棒的定位。通过在城市环境中进行的实验验证了该方法。

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