论文标题

通过融合基于云的集体环境模型中的动态占用网格图来降低不确定性

Reducing Uncertainty by Fusing Dynamic Occupancy Grid Maps in a Cloud-based Collective Environment Model

论文作者

Lampe, Bastian, van Kempen, Raphael, Woopen, Timo, Kampmann, Alexandru, Alrifaee, Bassam, Eckstein, Lutz

论文摘要

准确的环境感知对于自动车辆至关重要。由于定期发生遮挡和不准确,因此多辆车的感知数据的交换和组合似乎很有希望。本文介绍了一种将自动和连接车辆的感知数据组合成在基于云的系统中的证据动态占用网格图(教条)的形式的方法。该系统称为集体环境模型,是Unicaragil项目中开发的云系统的一部分。提出的概念扩展了现有的方法,将代表单个车辆的静态环境的证据网格图融合到动态环境中多个车辆计算出的证据网格图。开发的融合过程还结合了连接车辆提供的自我报告的数据,而不仅仅是依靠感知数据。我们表明,香农熵描述的教条以及非特异性度量所描述的不确定性可以减少。这使自动化和连接的车辆能够以未知的但有关环境的相关信息而以不可能的方式行事。

Accurate environment perception is essential for automated vehicles. Since occlusions and inaccuracies regularly occur, the exchange and combination of perception data of multiple vehicles seems promising. This paper describes a method to combine perception data of automated and connected vehicles in the form of evidential Dynamic Occupany Grid Maps (DOGMas) in a cloud-based system. This system is called the Collective Environment Model and is part of the cloud system developed in the project UNICARagil. The presented concept extends existing approaches that fuse evidential grid maps representing static environments of a single vehicle to evidential grid maps computed by multiple vehicles in dynamic environments. The developed fusion process additionally incorporates self-reported data provided by connected vehicles instead of only relying on perception data. We show that the uncertainty in a DOGMa described by Shannon entropy as well as the uncertainty described by a non-specificity measure can be reduced. This enables automated and connected vehicles to behave in ways not before possible due to unknown but relevant information about the environment.

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