Radar based Obstacle Detection System for Autonomous Unmanned Surface Vehicles

Jee-Soo Ha, Soo-Ri Im, W. Lee, Dong-Hoon Kim, Jaekwan Ryu
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引用次数: 2

Abstract

This paper proposes a dynamic obstacle detection system for USV based on marine radar and Electronic Navigational chart (ENC), the most common navigation sensors on ships. This system has the advantage of enabling simple obstacle recognition without the need to additionally mount expensive equipment. In this system, we generated two types of grid maps: one is plan position indicator (PPI) images from marine radar, the other is a hull information-based grid map extracted from ENC. By accumulating the two grid map images, obstacles that appear repeatedly are classified as fixed obstacles, and obstacles that move as the grid map is updated are classified as dynamic obstacles. The proposed obstacle detection system was installed in the Sea Sword USV developed by LIGNex1 and tested in a marine environment. The system proposed in the experiment recognized the small rubber boat as a dynamic obstacle and the surrounding environment as a static obstacle. Along with our proposed obstacle detection system, it is possible to recognize obstacles through ENC and radar, which are essential equipment for ships, without video equipment.
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基于雷达的自主无人水面车辆障碍物检测系统
提出了一种基于船用雷达和电子海图(ENC)的无人潜航器动态障碍物检测系统。该系统的优点是无需额外安装昂贵的设备即可进行简单的障碍物识别。在该系统中,我们生成了两种类型的网格图,一种是来自海洋雷达的平面图位置指示器(PPI)图像,另一种是来自ENC的船体信息网格图,通过对两种网格图图像的累积,将重复出现的障碍物分类为固定障碍物,将随着网格图更新而移动的障碍物分类为动态障碍物。提出的障碍物检测系统安装在由LIGNex1公司开发的“海剑”无人潜航器上,并在海洋环境中进行了测试。实验中提出的系统将小橡皮艇识别为动态障碍物,将周围环境识别为静态障碍物。结合我们提出的障碍物检测系统,可以在没有视频设备的情况下,通过船舶必备设备ENC和雷达进行障碍物识别。
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