基于视觉与雷达数据融合系统的地面导航目标检测与识别

Harimohan Jha, Vaibhav Lodhi, D. Chakravarty
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引用次数: 28

摘要

自动驾驶地面车辆需要解决其路径中遇到的许多问题,这些问题需要适当的检测和识别以实现导航目的。在导航过程中,障碍物的检测和识别有助于确定车辆的行驶轨迹,使其保持在安全的可驾驶区域。因此,有必要融合不同传感器的数据,以实现正确的导航。本文利用视觉和雷达传感器的数据对车辆视场内的目标进行分类,由雷达传感器确定检测的相对距离。77GHz毫米波雷达数据与用于探测和识别目的的摄像机数据相结合。YOLOv3架构已被用于通过视觉子系统进行障碍物检测。实验结果表明,该系统有助于车辆导航过程中对目标的实时检测和识别。尽管视觉传感器观察到的能见度较低,但由于雷达传感器提取的特征没有任何失真,因此即使在雾天或多尘天气等能见度较低的环境下,该系统也可以可靠和准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Detection and Identification Using Vision and Radar Data Fusion System for Ground-Based Navigation
Autonomous Ground vehicle needs to tackle a lot of problems encountered in their pathways which needs proper detection and identification for navigation purpose. Detection and identification of obstacles during navigation helps in defining the trajectories for vehicle to maintain it into a safe drivable zone. Hence, it is necessary to fuse the data from different sensors for proper navigation. In this paper, vision and radar sensors data are used for classification of objects in the field of view of vehicle and the relative distance of detection is made by the Radar sensor. 77GHz mmw radar data has been coupled with a camera data for detection and identification purpose. YOLOv3 architecture has been used for obstacle detection through vision subsystem. It is observed that the proposed system helps in detection and identification of objects in real time during navigation of vehicle. This system may be reliable and accurate even in environments with low visibility like foggy or dusty weather due to features extracted by radar sensor without any distortions in spite of less visibility observed by vision sensor.
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