Automotive mmWave radar has been widely used in the automotive industry due to its small size, low cost, and complementary advantages to optical sensors (cameras, LiDAR, etc.) in adverse weathers, e.g., fog, raining, and snowing. On the other side, its large wavelength also poses fundamental challenges to perceive the environment. Recent advances have made breakthroughs on its inherent drawbacks, i.e., the multipath reflection and the sparsity of mmWave radar's point clouds. However, the lower frequency of mmWave signals is more sensitive to vehicles' mobility than that of the visual and laser signals. This work focuses on the problem of frequency shift, i.e., the Doppler effect distorts the radar ranging measurements and its knock-on effect on metric localization. We propose a new radar-based metric localization framework that obtains more accurate location estimation by restoring the Doppler distortion. Specifically, we first design a new algorithm that explicitly compensates the Doppler distortion of radar scans and then model the measurement uncertainty of the Doppler-compensated point cloud to further optimize the metric localization. Extensive experiments using the public nuScenes dataset and Carla simulator demonstrate that our method outperforms the state-of-the-art approach by 19.2\% and 13.5\% improvements in terms of translation and rotation errors, respectively.
翻译:汽车业广泛使用汽车用毫米Wave雷达,原因是其体积小,成本低,而且对在恶劣天气(如雾、雨和下雪)中(如雾、雨和雪)的光感传感器(相机、激光雷达等)具有补充优势,对光学传感器(相机、激光雷达、激光雷达等)而言,其辅助优势较低。另一方面,其大波长也给对环境的感知带来根本性挑战。最近的进展使汽车工业的内在缺陷,即多路反射和毫米Wave雷达点云的宽度有了突破。然而,毫米Wave信号的频率比视觉和激光信号低,对车辆的机动性更为敏感。这项工作的重点是频率变化问题,即多普勒效应扭曲雷达测距测量及其测距效应对测量环境的影响。我们提出了一个新的基于雷达的本地化基准框架,通过恢复多普勒反射仪的扭曲,获得更准确的位置估计。具体地说,我们首先设计一种新的算法,明确补偿雷达扫描的多普勒扭曲性,然后为多普勒调点校准点对车辆的移动率的精确度进行测量误差。