This paper presents an efficient and accurate radar odometry pipeline for large-scale localization. We propose a radar filter that keeps only the strongest reflections per-azimuth that exceeds the expected noise level. The filtered radar data is used to incrementally estimate odometry by registering the current scan with a nearby keyframe. By modeling local surfaces, we were able to register scans by minimizing a point-to-line metric and accurately estimate odometry from sparse point sets, hence improving efficiency. Specifically, we found that a point-to-line metric yields significant improvements compared to a point-to-point metric when matching sparse sets of surface points. Preliminary results from an urban odometry benchmark show that our odometry pipeline is accurate and efficient compared to existing methods with an overall translation error of 2.05%, down from 2.78% from the previously best published method, running at 12.5ms per frame without need of environmental specific training.
翻译:本文为大规模本地化提供了一个高效、准确的雷达观测管道。 我们提议了一个雷达过滤器, 仅保留最强的反射/ 振荡度超过预期的噪声水平。 过滤的雷达数据用于通过在附近的键盘上登记当前扫描进行递增估计odo度。 通过对本地表面进行建模, 我们通过将点对线的测量量最小化并准确地从稀有点数组中估算odo度量来登记扫描, 从而提高效率 。 具体地说, 我们发现, 点对线的测量量比匹配稀有地表点时的点对点测量度的测量量显著改进。 城市的观察测量基准的初步结果显示, 与现有方法相比, 我们的观察测量管线是准确有效的, 总体翻译误差为2.05%, 低于以往最佳公布方法的2. 78%, 以每框架12.5米的速度运行, 不需要环境特定培训。