基于无人机的静态目标动态自动计数

Dhruvil Darji, G. Vejarano
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引用次数: 1

摘要

提出了利用无人机对地面静态目标进行计数的方法。据我们所知,这是第一篇即时自动计数的论文。飞行路线是在起飞前设定好的。无人机捕获地面图像,这些图像在飞行中连续处理,以计算飞行路径上的目标数量。使用所提出的目标计数算法对每个图像进行处理。首先在当前图像中检测目标的中心,然后对之前图像中未覆盖的目标进行识别和计数。该算法的性能取决于其识别当前图像中已经在先前图像中计算的目标的能力,并且这种能力受到无人机在存在风的情况下保持飞行路径的有限精度的影响。在实验评估中,地面目标按三种不同配置进行分布:目标沿航迹直线分布、目标与航迹成一定角度平行线分布、目标随机分布。目标计数正确率分别为96.0%、88.9%和91.9%。
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Counting Static Targets Using an Unmanned Aerial Vehicle On-the-Fly and Autonomously
The counting of static targets on ground using an unmanned aerial vehicle (UAV) is proposed. To the best of our knowledge, this is the first paper to do such counting on-the-fly and autonomously. The flight path is programmed before take-off. The UAV captures images of the ground which are processed consecutively on-the-fly to count the number of targets along the flight path. Each image is processed using the proposed target-counting algorithm. First, targets' centers are detected in the current image, and second, the targets that were not covered in previous images are identified and counted. The performance of the algorithm depends on its ability to identify in the current image what targets were already counted in previous images, and this ability is affected by the limited accuracy of the UAV to stay on the flight path in the presence of wind. In the experimental evaluation, targets were distributed on ground on three different configurations: one line of targets along the flight path, parallel lines of targets at an angle with the flight path, and random. The accuracy of the target count was 96.0%, 88.9% and 91.9% respectively.
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