Vehicle Detection in the Autonomous Vehicle Environment for Potential Collision Warning

Mario Gluhaković, M. Herceg, M. Popovic, J. Kovacevic
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引用次数: 12

Abstract

In this paper, a method for the vehicles detection in the surroundings of an autonomous vehicle and warnings of potential collision with them is presented. The method, which consists of two parts, is implemented in robot operating system (ROS). The first part is used to detect vehicles in an autonomous vehicle environment, in which, YOLO v2 algorithm, trained on a newly created set of images, is used. The YOLO v2 algorithm is configured to detect four classes of objects: a car, a van, a truck, and a bus. The second part of the proposed method is the ROS node for distance assessment. In particular, two ROS nodes for distance assessment are created; one ROS node used for distance assessment in the Carla simulator, while the other ROS node is used for real-world distance assessment. The testing results of the proposed method show promising results.
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自动驾驶汽车环境中潜在碰撞预警的车辆检测
提出了一种自动驾驶汽车对周围环境中的车辆进行检测并对可能发生碰撞的车辆进行预警的方法。该方法由两部分组成,并在机器人操作系统(ROS)中实现。第一部分用于自动驾驶汽车环境中的车辆检测,其中使用在新创建的图像集上训练的YOLO v2算法。YOLO v2算法被配置为检测四类物体:汽车、面包车、卡车和公共汽车。该方法的第二部分是用于距离评估的ROS节点。特别是,创建了两个用于距离评估的ROS节点;一个ROS节点用于Carla模拟器中的距离评估,而另一个ROS节点用于真实世界的距离评估。测试结果表明,该方法具有良好的效果。
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