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首页> 外文期刊>IEEE Robotics and Automation Letters >CARPAL: Confidence-Aware Intent Recognition for Parallel Autonomy
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CARPAL: Confidence-Aware Intent Recognition for Parallel Autonomy

机译:CARPAL:信心意识意识到平行自主权的识别

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摘要

Predicting driver intentions is a difficult and crucial task for advanced driver assistance systems. Traditional confidence measures on predictions often ignore the way predicted trajectories affect downstream decisions for safe driving. In this letter, we propose a novel multi-task intent recognition neural network that predicts not only probabilistic driver trajectories, but also utility statistics associated with the predictions for a given downstream task. We establish a decision criterion for parallel autonomy that takes into account the role of driver trajectory prediction in real-time decision making by reasoning about estimated task-specific utility statistics. We further improve the robustness of our system by considering uncertainties in downstream planning tasks that may lead to unsafe decisions. We test our online system on a realistic urban driving dataset, and demonstrate its advantage in terms of recall and fall-out metrics compared to baseline methods, and demonstrate its effectiveness in intervention and warning use cases.
机译:预测驾驶员意图是对高级驾驶员辅助系统的困难和关键任务。关于预测的传统信心措施往往忽略了预测轨迹影响下游决策以进行安全驾驶的方式。在这封信中,我们提出了一种新的多任务意图识别神经网络,其不仅预测概率驱动程序轨迹,而且还预测了与给定下游任务的预测相关的公用事业统计信息。我们建立了并行自主权的决策标准,该决策标准考虑了通过推理估计的任务特定公用事业统计数据的实时决策中的驱动程序轨迹预测的作用。我们通过考虑可能导致不安全决策的下游规划任务的不确定性,进一步提高了我们系统的稳健性。我们在现实的城市驾驶数据集中测试我们的在线系统,并与基线方法相比召回和跌落指标的优势,并展示其在干预和警告用例中的有效性。

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