自动出租车系统中模糊逻辑障碍的识别与融合

P. J. Escamilla-Ambrosio, N. Lieven
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引用次数: 1

摘要

Autotaxi系统是一种安全关键传感器系统,用于执行自动驾驶车辆在专用铺装导轨网络上安全行驶所需的传感。主车辆配备了一套传感器,用于探测和跟踪视野中任何感兴趣的物体。本文提出了一种用于自动出租车系统的多传感器障碍物识别与融合方法。基于对车辆、待检测障碍物和导轨网络系统的了解,利用模糊逻辑原理设计了两种障碍物分类系统。在分类器1中,分类过程是根据障碍物的宽度和主车辆所行驶的道路类型进行的。在分类器2中,分类过程是根据障碍物的宽度和高度以及主车辆所行驶的道路类型进行的。此外,由于不同传感器的信息可以进行不同的身份声明,因此提出了一种融合这些身份声明的方法。通过仿真算例验证了该方法的可行性。报告了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy Logic Obstacle Identity Declaration and Fusion in the Autotaxi System
The Autotaxi system is a safety critical sensor system developed to perform the sensing required for an autonomous vehicle to drive safely along a dedicated paved guideway network. The host vehicle is equipped with a set of sensors used to detect and track any object of interest in the field of view. In this work a multiple-sensor obstacle identification and fusion approach for the Autotaxi system is proposed. Based on the knowledge about the vehicles, the obstacles to be detected, and the guideway network system, two obstacle classifier systems are designed using the principles of fuzzy logic. In Classifier 1 the classification process is carried out based on the obstacle's width and kind of road in which the host vehicle is navigating. In Classifier 2 the classification process is carried out based on the obstacle's width and height together with the kind of road in which the host vehicle is navigating. Furthermore, as different declarations of identity can be performed by using information from different sensors, a method to fuse these identity declarations is proposed. The viability of the proposed approach is demonstrated through a simulated example. Promising results are reported.
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