In modern autonomy stacks, prediction modules are paramount to planning motions in the presence of other mobile agents. However, failures in prediction modules can mislead the downstream planner into making unsafe decisions. Indeed, the high uncertainty inherent to the task of trajectory forecasting ensures that such mispredictions occur frequently. Motivated by the need to improve safety of autonomous vehicles without compromising on their performance, we develop a probabilistic run-time monitor that detects when a "harmful" prediction failure occurs, i.e., a task-relevant failure detector. We achieve this by propagating trajectory prediction errors to the planning cost to reason about their impact on the AV. Furthermore, our detector comes equipped with performance measures on the false-positive and the false-negative rate and allows for data-free calibration. In our experiments we compared our detector with various others and found that our detector has the highest area under the receiver operator characteristic curve.
翻译:在现代自主堆叠中,预测模块对于在其他移动物剂面前规划动作至关重要。然而,预测模块中的失败会误导下游规划师做出不安全的决定。事实上,轨迹预测任务固有的高度不确定性确保了这种错误经常发生。出于改善自主车辆安全而又不损害其性能的需要,我们开发了一种概率运行时间监测器,在“有害”预测失败发生时,即与任务相关的故障探测器进行检测。我们通过将轨迹预测错误传播到规划成本上,以说明其对AV的影响。此外,我们的探测器配备了假阳性和假阴性率的性能措施,并允许进行无数据校准。在我们的实验中,我们比较了我们的探测器和其他各种探测器,发现我们的探测器在接收器特征曲线下拥有最高的区域。