In order to make autonomous driving a reality, artificial neural networks have to work reliably in the open-world. However, the open-world is vast and continuously changing, so it is not technically feasible to collect and annotate training datasets which accurately represent this domain. Therefore, there are always domain gaps between training datasets and the open-world which must be understood. In this work, we investigate the domain gaps between high-resolution and low-resolution LiDAR sensors in object detection networks. Using a unique dataset, which enables us to study sensor resolution domain gaps independent of other effects, we show two distinct domain gaps - an inference domain gap and a training domain gap. The inference domain gap is characterised by a strong dependence on the number of LiDAR points per object, while the training gap shows no such dependence. These fndings show that different approaches are required to close these inference and training domain gaps.
翻译:为使自主驱动成为现实,人工神经网络必须在开放世界中可靠地运作。然而,开放世界是巨大且不断变化的,因此在技术上不可行,收集和批注准确代表该领域的培训数据集。因此,培训数据集与开放世界之间总是存在领域差距,必须理解这些差距。在这项工作中,我们调查了物体探测网络中高分辨率和低分辨率激光雷达传感器之间的领域差距。使用独特的数据集,使我们能够研究感应分辨率域的差距,而不受其他影响,我们发现两个截然不同的领域差距――推断域差距和培训域差距。推断域差距的特征是高度依赖每个物体的LIDAR点数,而培训差距则没有显示出这种依赖性。这些变化表明,需要采用不同的方法来缩小这些推断和培训域差距。