For autonomous driving, radar is an important sensor type. On the one hand, radar offers a direct measurement of the radial velocity of targets in the environment. On the other hand, in literature, radar sensors are known for their robustness against several kinds of adverse weather conditions. However, on the downside, radar is susceptible to ghost targets or clutter which can be caused by several different causes, e.g., reflective surfaces in the environment. Ghost targets, for instance, can result in erroneous object detections. To this end, it is desirable to identify anomalous targets as early as possible in radar data. In this work, we present an approach based on PointNets to detect anomalous radar targets. Modifying the PointNet-architecture driven by our task, we developed a novel grouping variant which contributes to a multi-form grouping module. Our method is evaluated on a real-world dataset in urban scenarios and shows promising results for the detection of anomalous radar targets.
翻译:对于自主驱动而言,雷达是一种重要的传感器类型。一方面,雷达直接测量环境目标的辐射速度。另一方面,在文献中,雷达传感器以其耐多种不利天气条件的强力而著称。然而,在下边,雷达容易受到幽灵目标或杂乱的影响,而这种变化可能由多种不同原因造成,例如环境中的反射表面。例如,幽灵目标可能导致错误的物体探测。为此目的,最好在雷达数据中尽早确定异常目标。在这项工作中,我们介绍了以点网为基础的探测异常雷达目标的方法。在任务驱动下,我们开发了一个新的组合变体,有助于多式组合模块。我们的方法是在城市情景中真实的数据集上进行评估,并显示探测异常雷达目标的可喜结果。