非传感器车辆定位的语义方法

Jan Oberländer, Sebastian Klemm, Marc Essinger, A. Rönnau, T. Schamm, Johann Marius Zöllner, R. Dillmann
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引用次数: 4

摘要

随着智能汽车的功能越来越强大,它们必须学会在各种各样的环境中导航和定位,包括没有gps和只有粗略地图的地区。我们认为,由于自动驾驶汽车必须能够感知和语义解释他们的直接环境,他们应该能够使用抽象的语义信息作为他们定位的唯一手段。这简化了环境地图所需的细节和精度水平,例如,停车场的粗略平面图就足以实现自动导航。我们提出了一个语义定位的概念,它只需要一个环境的概念语义图,并且可以与任何类型的传感器数据一起工作,从中可以提取所需的语义信息。我们提出了一种定位算法,它可以作为语义导航的基础,例如在自动驾驶的背景下,以及它在停车场场景中应用的一些初步结果。
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A semantic approach to sensor-independent vehicle localization
As intelligent vehicles become more and more capable, they must learn to navigate and localize themselves in a wide variety of environments, including GPS-denied and only crudely mapped areas. We argue that since autonomous vehicles must be able to perceive, and semantically interpret, their immediate environment, they should be able to use abstract semantic information as their sole means of localization. This simplifies the level of detail and precision required from environment maps so that, for example, a rough floor plan of a parking garage will suffice to autonomously navigate it. We propose a concept for semantic localization which only requires a conceptual semantic map of the environment, and can be made to work with any kind of sensor data from which the required semantic information can be extracted. We present a localization algorithm which may be used as a base for semantic navigation, e.g. in context of automated driving, and some initial results of its application in a parking garage scenario.
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