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Fast vision-based autonomous detection of moving cooperative target for unmanned aerial vehicle landing

机译:基于快速视觉的无人飞行器着陆移动协同目标自主检测

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We propose a fast and effective method, fast target detection (FTD), to detect the moving cooperative target for the unmanned aerial vehicle landing, and the target is composed of double circles and a cross. The purpose of our strategy is to land on the target. The FTD method needs to detect the target at the high and low heights. At the high height, the target appears completely and stably in the camera field. The FTD method can detect the circle and cross to rapidly reach the target center, named cross and circle-FTD (C-2 - FTD). To detect the cross, we propose a slope distance equation to obtain the distance between two slopes. The proposed slopes cluster method, based on the distance equation and K-means, is used to determine the cross center. At the low height, the target appears incompletely and unstably. Therefore, FTD methods detect only the cross, named cross-FTD (C-1 - FTD). We extract the cross features (CFs) based on line segments. Then, four CFs are combined based on graph theory. Experiments on our four datasets show that FTD has rapid speed and good performance. (Our method is implemented in C++ and is available at https://github.com/Li-Zhaoxi/UAV-Vision-Servo.) On the Mohamed Bin Zayed International Robotics Challenge datasets made we constructed, C-2 - FTD detects the target from a 960 x 540 image approximately 20 ms per pipeline with 82.24% F-measure and tracks target approximately 6.27 ms per pipeline with 94.39% F-measure. C-1 - FTD detects centers from a 480 x 270 image at approximately 4.69 ms per image with 86.05% F-measure.
机译:我们提出了一种快速有效的方法,即快速目标检测(FTD),以检测无人飞行器着陆的移动协同目标,该目标由双圆圈和十字组成。我们策略的目的是实现目标。 FTD方法需要在高低处检测目标。在高处,目标完全稳定地出现在摄像机视野中。 FTD方法可以检测到圆和十字以快速到达目标中心,称为十字和圆-FTD(C-2-FTD)。为了检测交叉点,我们提出了一个坡度距离方程来获得两个坡度之间的距离。提出的基于距离方程和K-均值的斜坡聚类方法用于确定交叉中心。在低高度处,目标看起来不完整且不稳定。因此,FTD方法仅检测交叉,称为交叉FTD(C-1-FTD)。我们基于线段提取十字特征(CF)。然后,基于图论将四个CF组合在一起。对我们的四个数据集进行的实验表明,FTD具有快速的速度和良好的性能。 (我们的方法在C ++中实现,并且可以在https://github.com/Li-Zhaoxi/UAV-Vision-Servo上找到。)在我们构建的Mohamed Bin Zayed国际机器人挑战赛数据集上,C-2-FTD检测到从960 x 540图像中获取目标,每个管道以20.24毫秒的F-measure进行大约20毫秒的跟踪,并以94.39%的F-measure跟踪每个管道约6.27毫秒的目标。 C-1-FTD从480 x 270图像中检测中心,每个图像约4.69毫秒,F测度为86.05%。

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