A high-performing object detection system plays a crucial role in autonomous driving (AD). The performance, typically evaluated in terms of mean Average Precision, does not take into account orientation and distance of the actors in the scene, which are important for the safe AD. It also ignores environmental context. Recently, Philion et al. proposed a neural planning metric (PKL), based on the KL divergence of a planner's trajectory and the groundtruth route, to accommodate these requirements. In this paper, we use this neural planning metric to score all submissions of the nuScenes detection challenge and analyze the results. We find that while somewhat correlated with mAP, the PKL metric shows different behavior to increased traffic density, ego velocity, road curvature and intersections. Finally, we propose ideas to extend the neural planning metric.
翻译:高性能物体探测系统在自主驾驶(AD)中发挥着关键作用。通常按平均平均精确度评估的性能没有考虑到现场行为者的方向和距离,而这些对安全自动驾驶很重要。它也忽视了环境背景。最近,菲利翁等人根据规划者轨道和地面真实路线的KL差异,提出了一个神经规划指标(PKL),以适应这些要求。在本文中,我们使用这种神经规划指标来评分所有提交NusScenes检测的挑战并分析结果。我们发现,虽然PKL指标与MAP多少有些关联,但与交通密度、自我速度、道路曲线和交叉性增加有不同的行为。最后,我们提出了扩大神经规划指标的想法。