基于无人机的大型物体外观缺陷检测

Wenjie Wang, Xiang-Yin Dai, Chun-Yuan Cheng, Shang-Ming Ciou
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摘要

一般来说,大型物体的缺陷检查,如飞机、桥梁、建筑物等,由于物体巨大、高,必须需要一些工具或爬高才能实现检查。然而,爬得高是危险的,依靠其他工具需要时间和精力。因此,本文旨在建立一种用于大型物体表面缺陷检测的无人机系统。在该系统中,无人机可以沿着物体的外部以最短路径飞行,并调整其万向架的角度,使无人机的相机可以检测物体外观的缺陷。通过求解导航点的旅行商问题得到最短路径。基于目标点云的法向量构建导航点,利用opensfm建立导航点云,通过求解导航点的旅行商问题得到导航点的最短路径。导航点是基于物体点云的法向量构建的。点云是使用OpenSfM (Structure from Motion)创建的。采用视觉同步定位与映射(V-SLAM)作为无人机的位置控制,使其能够沿着由导航点组成的最短路径稳定飞行。在无人机采集到物体外观的全图像后,利用YOLOv4-P6网络进行缺陷识别。本研究最后提出了一个检测汽车缺陷的实验,成功高效地发现了三种缺陷:油漆脱落、腐蚀、凹痕。
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Drone-Based Inspection of the Appearance Defects for a Large Object
In general, the defect inspection of a large object, such as an aircraft, a bridge, or a building, etc., must need some tools or climbing high to achieve the inspection because the object is vast and high. However, climbing high is dangerous, and relying on other tools takes time and effort. Therefore, this paper aims to establish a drone system for detecting defects in the surface of a large object. In the system, the drone can fly along the object’s exterior with the shortest path and adjust the angle of its gimbal such that the drone’s camera can inspect the defects in the object’s appearance. The shortest path is obtained from solving the Travelling Salesman Problem of the navigation points. The navigation points are built based on the normal vectors of the object’s point cloud, which is established using OpenSfMThe shortest path is obtained from solving the Travelling Salesman Problem of the navigation points. The navigation points are built based on the normal vectors of the object’s point cloud. The point cloud is created using OpenSfM (Structure from Motion). Adopting Visual Simultaneous Localization and Mapping (V-SLAM) as the drone’s position control such that it can fly stably following the shortest path composed of navigation points. After the drone collects the whole image of the object’s appearance, the network YOLOv4-P6 is used to recognizes the defects. This study finally proposed an experiment to inspect car defects and found three types of defects: paint loss, corrosion, and dent, successfully and efficiently.
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