汽车安全轨迹中动态物体感知相关性的保守估计

Kent Mori, Kai Storms, Steven C. Peters
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引用次数: 2

摘要

有效的测试策略是实现自动驾驶的核心挑战。这就需要明确的需求和合适的测试方法。在这项工作中,对感知模块的要求考虑了相关性。相关性的概念目前仍然没有得到充分的定义和具体说明。在本文中,我们提出了一种新的方法来克服这一挑战,示范性应用于公路领域的碰撞安全。使用这个通用的系统和用例规范,可以推导出相应的相关性概念。因此,不相关物体被定义为在考虑所有不确定性的情况下,不限制自我车辆可用的安全动作集的物体。作为第一步,用例根据碰撞相关性分解为功能场景。对于每个功能场景,自我车辆和任何其他动态对象的可能动作都被形式化为方程。这组可能的操作受到交通规则的约束,从而产生相关标准。因此,我们提出了一个保守估计,动态对象与感知相关,需要考虑完整的评估。该估计提供了适用于感知组件的离线测试和验证的需求。给出了highD数据集的可视化示例,显示了结果的合理性。最后,概述了未来验证所提出的相关性概念的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conservative Estimation of Perception Relevance of Dynamic Objects for Safe Trajectories in Automotive Scenarios
Having efficient testing strategies is a core challenge that needs to be overcome for the release of automated driving. This necessitates clear requirements as well as suitable methods for testing. In this work, the requirements for perception modules are considered with respect to relevance. The concept of relevance currently remains insufficiently defined and specified.In this paper, we propose a novel methodology to overcome this challenge by exemplary application to collision safety in the highway domain. Using this general system and use case specification, a corresponding concept for relevance is derived. Irrelevant objects are thus defined as objects which do not limit the set of safe actions available to the ego vehicle under consideration of all uncertainties. As an initial step, the use case is decomposed into functional scenarios with respect to collision relevance. For each functional scenario, possible actions of both the ego vehicle and any other dynamic object are formalized as equations. This set of possible actions is constrained by traffic rules, yielding relevance criteria.As a result, we present a conservative estimation which dynamic objects are relevant for perception and need to be considered for a complete evaluation. The estimation provides requirements which are applicable for offline testing and validation of perception components. A visualization is presented for examples from the highD dataset, showing the plausibility of the results. Finally, a possibility for a future validation of the presented relevance concept is outlined.
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