汽车高分辨率雷达传感器的自适应三维网格聚类算法

Mingkang Li, Martin Stolz, Zhaofei Feng, M. Kunert, R. Henze, F. Küçükay
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引用次数: 19

摘要

新型汽车高分辨率雷达传感器可以从周围环境中检测到数千个反射点,例如行人、骑自行车的人、车辆和路边基础设施。为了对目标进行分类和跟踪,需要将属于同一目标的检测点聚类成一组,然后再进行进一步的处理。本文提出了一种基于雷达信号处理和角度估计阶段生成的距离/角度/速度网格的自适应聚类方法。与x/y方法相比,多个反射点不会在近距离合并到一个网格单元中,而是将其各自的信息保留在不同的指定网格单元中。采用基于网格索引的聚类窗口来搜索三个维度上的相似点,节省了时间和存储空间。为了消除参数依赖和实际雷达测量不确定性导致的不正确聚类,将该方法扩展为基于模型的聚类窗口,该窗口依赖于被跟踪和估计的目标轮廓。通过对各种测量数据的验证,得到了稳定的聚类结果,其真阳性率接近完美,不受主流参数和对象类型的影响。
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An Adaptive 3D Grid-Based Clustering Algorithm for Automotive High Resolution Radar Sensor
Novel automotive high resolution radar sensors can detect several thousands of reflection points from the surrounding environment, e.g., pedestrians, cyclists, vehicles and roadside infrastructure. For object classification and tracking, the detection points belonging to the same object shall be clustered into one group before further processing. This paper presents an adaptive clustering approach based on a range/angle/velocity-grid generated originally from the radar signal processing and angle estimation stage. In contrast to an x/y-approach, multiple reflection points will not be merged into one single grid cell at close ranges, but keep their individual information in different assigned grid cells. A time and storage efficient process with a clustering window according to grid indices is implemented to search for the points with similarity in all three dimensions. In order to eliminate the parameter dependency and the incorrect clustering due to uncertainties of real radar measurements, this approach is extended with a model-based clustering window depending on the tracked and estimated object contour. By validation with various measurement data, stable clustering results with almost perfect true positive rates are achieved independently of the prevailing parameters and object types.
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