Self-driving cars face complex driving situations with a large amount of agents when moving in crowded cities. However, some of the agents are actually not influencing the behavior of the self-driving car. Filtering out unimportant agents would inherently simplify the behavior or motion planning task for the system. The planning system can then focus on fewer agents to find optimal behavior solutions for the ego~agent. This is helpful especially in terms of computational efficiency. In this paper, therefore, the research topic of importance filtering with driving risk models is introduced. We give an overview of state-of-the-art risk models and present newly adapted risk models for filtering. Their capability to filter out surrounding unimportant agents is compared in a large-scale experiment. As it turns out, the novel trajectory distance balances performance, robustness and efficiency well. Based on the results, we can further derive a novel filter architecture with multiple filter steps, for which risk models are recommended for each step, to further improve the robustness. We are confident that this will enable current behavior planning systems to better solve complex situations in everyday driving.
翻译:自行驾驶的汽车面临复杂的驾驶情况,在拥挤的城市中移动的代理商数量很大。 但是, 有些代理商实际上并没有影响自驾驶汽车的行为。 过滤无关紧要的代理商将必然简化系统的行为或动作规划任务。 规划系统可以关注较少的代理商, 以便为自我驾驶代理商找到最佳行为解决方案。 这在计算效率方面特别有用。 因此, 在本文中引入了与驾驶风险模型进行重要过滤的研究主题。 我们给出了最新的最新风险模型, 并提出了新调整的过滤风险模型。 它们过滤无关紧要的代理商的能力将在大规模实验中进行比较。 事实证明, 新的轨距平衡性能、 稳健性和效率井然。 根据结果, 我们可以进一步获得一个具有多个过滤步骤的新的过滤器结构, 每一步都建议风险模型, 以进一步提高驾驶风险模型的稳健性。 我们相信, 这将使当前的行为规划系统能够更好地解决日常驾驶过程中的复杂情况。</s>