Drone Tracking with Drone using Deep Learning

Ziya Tan, Mehmet Karaköse, Elif Özet
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Abstract

With the development of technology, studies in fields such as artificial intelligence, computer vision and deep learning are increasing day by day. In line with these developments, object tracking and object detection studies have spread over wide areas. In this article, a study is presented by simulating two different drones, a leader and a follower drone, accompanied by deep learning algorithms. Within the scope of this study, it is aimed to perform a drone tracking with drone in an autonomous way. Two different approaches are developed and tested in the simulator environment within the scope of drone tracking. The first of these approaches is to enable the leader drone to detect the target drone by using object-tracking algorithms. YOLOv5 deep learning algorithm is preferred for object detection. A data set of approximately 2500 images was created for training the YOLOv5 algorithm. The Yolov5 object detection algorithm, which was trained with the created data set, reached a success rate of approximately 93% as a result of the training. As the second approach, the object-tracking algorithm we developed is used. Trainings were carried out in the simulator created in the Matlab environment. The results are presented in detail in the following sections. In this article, some artificial neural networks and some object tracking methods used in the literature are explained.
无人机跟踪与无人机使用深度学习
随着科技的发展,人工智能、计算机视觉、深度学习等领域的研究日益增多。随着这些发展,目标跟踪和目标检测的研究已经在广泛的领域展开。在本文中,通过模拟两种不同的无人机,领导者和追随者无人机,并辅以深度学习算法,提出了一项研究。在本研究的范围内,其目的是利用无人机以自主的方式进行无人机跟踪。开发了两种不同的方法,并在无人机跟踪的模拟器环境中进行了测试。第一种方法是通过使用目标跟踪算法使领头无人机能够检测到目标无人机。目标检测首选YOLOv5深度学习算法。创建了大约2500张图像的数据集,用于训练YOLOv5算法。使用所创建的数据集进行训练的Yolov5目标检测算法,通过训练达到了约93%的成功率。第二种方法是使用我们开发的目标跟踪算法。在Matlab环境下创建的模拟器中进行培训。结果将在下面几节中详细介绍。本文介绍了文献中使用的一些人工神经网络和一些目标跟踪方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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