Radar sensors employed for environment perception, e.g. in autonomous vehicles, output a lot of unwanted clutter. These points, for which no corresponding real objects exist, are a major source of errors in following processing steps like object detection or tracking. We therefore present two novel neural network setups for identifying clutter. The input data, network architectures and training configuration are adjusted specifically for this task. Special attention is paid to the downsampling of point clouds composed of multiple sensor scans. In an extensive evaluation, the new setups display substantially better performance than existing approaches. Because there is no suitable public data set in which clutter is annotated, we design a method to automatically generate the respective labels. By applying it to existing data with object annotations and releasing its code, we effectively create the first freely available radar clutter data set representing real-world driving scenarios. Code and instructions are accessible at www.github.com/kopp-j/clutter-ds.
翻译:用于环境感知的雷达传感器,例如,在自主飞行器中,产生许多不想要的杂乱。这些点没有相应的实际物体,是跟踪物体探测或跟踪等处理步骤的主要错误源。因此,我们提出了两个新的神经网络设置,用于识别杂乱物。输入数据、网络结构和培训配置专门为这项任务作了调整。特别注意由多传感器扫描组成的点云的缩小取样。在一项广泛的评估中,新设置显示的性能比现有方法要好得多。由于没有适当的公共数据集来说明混结物,我们设计了一种自动生成相关标签的方法。通过将它应用到带有对象说明和发布代码的现有数据,我们有效地创建了第一个可自由获取的雷达杂乱数据集,代表现实世界的驱动情景。代码和指示可在www.github.com/kopp-j/clutter-ds查阅。</s>