基于图像的无人机立体视觉路径规划算法

S. Iz, M. Unel
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引用次数: 2

摘要

本文提出了一种利用计算机视觉技术开发的基于图像的路径规划算法,并与已知的确定性和概率算法a *和概率路线图算法(probabilistic Road Map algorithm, PRM)进行了比较分析。地形深度对计算的路径安全性有显著影响。在二维图像中无法区分表面上的陨石坑和山丘。该方法使用由无人机生成的地形视差图。利用计算机视觉技术,包括边缘、直线和角点检测方法以及立体深度重建技术,对捕获的图像进行处理,并利用发现的视差图来定义候选轨迹点。使用ArUco标记姿态估计和圆检测技术自动检测初始点和期望点。在介绍了数学模型和视觉技术之后,将所开发的算法与在V-REP仿真程序中创建的不同虚拟场景和在实验室环境中创建的物理设置中的已知算法进行了比较。结果表明了该算法的有效性。
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An Image-Based Path Planning Algorithm Using a UAV Equipped with Stereo Vision
This paper presents a novel image-based path planning algorithm that was developed using computer vision techniques, as well as its comparative analysis with well-known deterministic and probabilistic algorithms, namely A* and Probabilistic Road Map algorithm (PRM). The terrain depth has a significant impact on the calculated path safety. The craters and hills on the surface cannot be distinguished in a two-dimensional image. The proposed method uses a disparity map of the terrain that is generated by using a UAV. Several computer vision techniques, including edge, line and corner detection methods, as well as the stereo depth reconstruction technique, are applied to the captured images and the found disparity map is used to define candidate way-points of the trajectory. The initial and desired points are detected automatically using ArUco marker pose estimation and circle detection techniques. After presenting the mathematical model and vision techniques, the developed algorithm is compared with well-known algorithms on different virtual scenes created in the V-REP simulation program and a physical setup created in a laboratory environment. Results are promising and demonstrate effectiveness of the proposed algorithm.
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