Interactive driving scenarios, such as lane changes, merges and unprotected turns, are some of the most challenging situations for autonomous driving. Planning in interactive scenarios requires accurately modeling the reactions of other agents to different future actions of the ego agent. We develop end-to-end models for conditional behavior prediction (CBP) that take as an input a query future trajectory for an ego-agent, and predict distributions over future trajectories for other agents conditioned on the query. Leveraging such a model, we develop a general-purpose agent interactivity score derived from probabilistic first principles. The interactivity score allows us to find interesting interactive scenarios for training and evaluating behavior prediction models. We further demonstrate that the proposed score is effective for agent prioritization under computational budget constraints.
翻译:交互式驾驶情景,如车道变化、合并和无保护旋转等,是自主驾驶最具挑战性的情况。交互式情景规划要求准确地模拟其他代理商对自我代理商未来不同行动的反应。我们开发了有条件行为预测的端对端模型(CBP),将自我代理商的未来查询轨迹作为输入,并预测了以查询为条件的其他代理商未来轨迹的分布。利用这一模型,我们根据概率第一原则开发了通用代理商互动得分。互动性评分使我们能够找到有趣的培训和行为预测模型评估互动情景。我们进一步表明,拟议得分对于计算预算限制下的代理商优先排序是有效的。