基于胡力矩的半球形圆顶无人机自主着陆

K. R. Chandra, Satadal Ghosh
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引用次数: 3

摘要

本文提出了一种基于视觉的固定翼无人机自主着陆系统,该系统在三维结构上着陆,作为一种拦阻着陆机构,为摄像机的检测提供了强大的视觉线索。特别地,本文考虑了一个红色的半球形充气气囊作为视觉线索。基于矩的形状描述符被称为胡矩,用于精确检测圆顶。利用软件实验,利用无人机距离穹顶的水平和垂直距离对这些力矩进行表征,即使在远距离上也可以可靠地探测到穹顶。该算法只需要一个单目摄像机和一个机载处理单元,因此具有成本效益,也适用于无gps环境。在V-Realm builder和MATLAB的联合环境下对该算法进行了仿真。仿真结果验证了该算法的有效性。该算法也很容易扩展到不同颜色和形状的三维结构。
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Hu-Moment-Based Autonomous Landing of a UAV on a Hemispherical Dome
In this paper, a vision-based autonomous landing system for a fixed wing unmanned aerial vehicle (UAV) is proposed for landing on a three-dimensional structure, which acts as an arrested landing mechanism and provides a strong visual cue for the camera to be detected easily. In particular, a red-colored hemispherical inflated air-bag (dome) has been considered as the visual cue in this paper. Moment-based shape descriptor called Hu-moments are leveraged for accurate detection of the dome. Characterization of these moments with horizontal and vertical distance of the UAV from the dome that is used to reliably detect the dome even at large distances is performed using software experiments. The proposed algorithm needs only a monocular camera and a processing unit on-board and hence is cost-effective and also applicable in GPS-denied environments. The proposed algorithm is simulated in a combined environment of V-Realm builder and MATLAB. Simulation results are presented to validate the presented algorithm for autonomous landing. This algorithm is also easily extendable to different colors and shapes of 3D structures.
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