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Monocular Vision SLAM-Based UAV Autonomous Landing in Emergencies and Unknown Environments

机译:在紧急情况和未知环境中基于单眼视觉SLAM的无人机自主着陆

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With the popularization and wide application of drones in military and civilian fields, the safety of drones must be considered. At present, the failure and drop rates of drones are still much higher than those of manned aircraft. Therefore, it is imperative to improve the research on the safe landing and recovery of drones. However, most drone navigation methods rely on global positioning system (GPS) signals. When GPS signals are missing, these drones cannot land or recover properly. In fact, with the help of optical equipment and image recognition technology, the position and posture of the drone in three dimensions can be obtained, and the environment where the drone is located can be perceived. This paper proposes and implements a monocular vision-based drone autonomous landing system in emergencies and in unstructured environments. In this system, a novel map representation approach is proposed that combines three-dimensional features and a mid-pass filter to remove noise and construct a grid map with different heights. In addition, a region segmentation is presented to detect the edges of different-height grid areas for the sake of improving the speed and accuracy of the subsequent landing area selection. As a visual landing technology, this paper evaluates the proposed algorithm in two tasks: scene reconstruction integrity and landing location security. In these tasks, firstly, a drone scans the scene and acquires key frames in the monocular visual simultaneous localization and mapping (SLAM) system in order to estimate the pose of the drone and to create a three-dimensional point cloud map. Then, the filtered three-dimensional point cloud map is converted into a grid map. The grid map is further divided into different regions to select the appropriate landing zone. Thus, it can carry out autonomous route planning. Finally, when it stops upon the landing field, it will start the descent mode near the landing area. Experiments in multiple sets of real scenes show that the environmental awareness and the landing area selection have high robustness and real-time performance.
机译:随着无人机在军事和民用领域的普及和广泛应​​用,必须考虑无人机的安全性。目前,无人机的故障率和坠落率仍然远远高于有人驾驶飞机。因此,有必要加强对无人机安全着陆和恢复的研究。但是,大多数无人机导航方法都依赖于全球定位系统(GPS)信号。当GPS信号丢失时,这些无人机将无法正确着陆或恢复。实际上,借助光学设备和图像识别技术,可以获得无人机的三维位置和姿势,并且可以感知无人机所处的环境。本文提出并实现了在紧急情况和非结构化环境中基于单眼视觉的无人机自主着陆系统。在该系统中,提出了一种新颖的地图表示方法,该方法结合了三维特征和中通滤波器以消除噪声并构建具有不同高度的栅格地图。另外,为了提高后续着陆区域选择的速度和准确性,提出了区域分割以检测不同高度的网格区域的边缘。作为一种视觉着陆技术,本文在两个任务上评估了提出的算法:场景重建的完整性和着陆位置的安全性。在这些任务中,首先,无人驾驶飞机扫描场景并在单眼视觉同时定位和制图(SLAM)系统中获取关键帧,以估计无人机的姿态并创建三维点云图。然后,将滤波后的三维点云图转换为网格图。网格图进一步分为不同的区域,以选择合适的着陆区。因此,它可以执行自主路线规划。最后,当它停在着陆场上时,它将在着陆区附近开始下降模式。在多组真实场景中进行的实验表明,环境意识和着陆区选择具有很高的鲁棒性和实时性。

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