In this letter, we propose MAROAM, a millimeter wave radar-based SLAM framework, which employs a two-step feature selection process to build the global consistent map. Specifically, we first extract feature points from raw data based on their local geometric properties to filter out those points that violate the principle of millimeter-wave radar imaging. Then, we further employ another round of probabilistic feature selection by examining how often and how recent the feature point has been detected in the proceeding frames. With such a two-step feature selection, we establish a global consistent map for accurate and robust pose estimation as well as other downstream tasks. At last, we perform loop closure and graph optimization in the back-end, further reducing the accumulated drift error. We evaluate the performance of MAROAM on the three datasets: the Oxford Radar RobotCar Dataset, the MulRan Dataset and the Boreas Dataset. We consider a variety of experimental settings with different scenery, weather, and road conditions. The experimental results show that the accuracy of MAROAM is 7.95%, 37.0% and 8.9% higher than the currently best-performing algorithms on these three datasets, respectively. The ablation results also show that our map-based odometry performs 28.6% better than the commonly used scan-to-frames method. Finally, as devoted contributors to the open-source community, we will open source the algorithm after the paper is accepted.
翻译:在此信中,我们提议使用以毫米波雷达为基础的SLAM框架,即以毫米波雷达为基础的SLAM框架,它使用两步特征选择程序来构建全球一致的地图。具体地说,我们首先根据当地几何特性从原始数据中提取特征点,以过滤违反毫米波雷达成像原则的那些点。然后,我们进一步使用另一轮概率性特征选择,通过检查在程序框架中如何频率和如何检测到最近的特征点。通过这样的两步特征选择,我们为准确和稳健的图像估计以及其他下游任务建立一个全球一致的地图。最后,我们在后端进行循环关闭和图形优化,进一步减少累积的漂移错误。我们评估MAROAM在三个数据集上的表现:牛津雷达机器人汽车数据集、穆兰数据集和博雷亚斯数据集。我们考虑了不同场景、天气和道路条件的各种实验环境。实验结果显示,MARAM的精确度是7.95 %、37.0%和8.9%的准确度将高于目前最佳表现的图表,进一步减少累积误差误差错误。我们评估了这三组的常规数据采集结果后,也分别显示了我们使用了28的轨道。