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Traffic situation assessment by recognizing interrelated road users

机译:通过识别相关道路使用者来评估交通状况

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With the trend to highly automated driving, future driver assistance systems are required to correctly assess even complex traffic situations and to predict their progress. As soon as other road users are present the number of possible situations becomes infinite, rendering their assessment based on learned situation types impossible. In this paper we propose to break the situation down into sets of interrelated entities by estimating for each road user the entities that affect its behavior most. The decomposition offers numerous advantages: Attention can be focused on relevant entities only and predictions can be performed with a smaller set of considered entities. As the high variability among situations requires a large amount of data for learning and testing, we implemented a simulation environment that gives access to the causes for the behavior of each road user. In a simulated intersection scenario we show that we can reliably infer the affecting entities for each road user only utilizing features that can be obtained by common sensors.
机译:随着高度自动化驾驶的趋势,未来的驾驶员辅助系统需要正确评估甚至复杂的交通状况并预测其进度。一旦出现其他道路使用者,可能情况的数量就会无限增加,从而使基于学习到的情况类型的评估变得不可能。在本文中,我们建议通过为每个道路使用者估计最影响其行为的实体,将情况分解为相互关联的实体集。分解具有许多优点:注意力只能集中在相关实体上,并且可以使用较少的一组考虑的实体进行预测。由于情况之间的高度可变性需要大量数据进行学习和测试,因此我们实施了一个模拟环境,该环境可以访问每个道路使用者行为的原因。在模拟的交叉路口场景中,我们表明,只有利用普通传感器可以获取的特征,我们才能可靠地为每个道路使用者推断受影响的实体。

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