A Novel Framework for Multiple Ground Target Detection, Recognition and Inspection in Precision Agriculture Applications Using a UAV

Shahbaz Khan, M. Tufail, Muhammad Tahir Khan, Z. Khan, J. Iqbal, Arsalan Wasim
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引用次数: 14

Abstract

Unmanned Aerial Vehicles (UAVs) have been recently used for different civilian applications such as remote sensing, search, and rescue (SAR), precision agriculture (PA), etc. A UAVs ability to sense and find targets remotely and, based on that, hover close to the target for a particular action makes it an ideal platform for the aforementioned applications. There has been extensive work carried out in the field of visual-based detection, navigation, and control, but the problem of detecting different ground targets and performing certain actions is still an open research area. This study proposes a novel framework for multiple target detection, recognition, and navigation of the UAV to the desired target and closely inspect it. This proposed framework can be deployed for accurately spot spraying in PA applications or SAR. The target detection and recognition in the framework are achieved through a computationally efficient Convolutional Neural Network (CNN) trained model, whereas the close inspection of the target is achieved through a PID-based tracking algorithm which ensures the UAV hover around the target for few seconds. The developed framework performed the desired objective in five stages employing Lawson’s control theory of sense, process, compare, decide and act. The target detection and recognition in the framework were validated with the field experiment, while the entire framework was validated through a variety of simulation flights conducted in Gazebo and PX4. The experiments’ results showed the versatility of the developed system to many complex missions where the targets are added or removed.
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基于无人机的精准农业多目标检测、识别与检测新框架
无人机(uav)最近被用于不同的民用应用,如遥感、搜索和救援(SAR)、精准农业(PA)等。无人机能够远程感知和发现目标,并在此基础上,悬停在目标附近进行特定动作,这使其成为上述应用的理想平台。在基于视觉的探测、导航和控制领域已经开展了大量的工作,但是探测不同的地面目标并执行某些动作的问题仍然是一个开放的研究领域。本研究提出了一种新的无人机多目标探测、识别和导航到目标并对目标进行近距离检查的框架。该框架可用于PA应用或SAR中的精确点喷涂。框架中的目标检测和识别是通过计算效率高的卷积神经网络(CNN)训练模型实现的,而目标的近距离检查是通过基于pid的跟踪算法实现的,该算法确保无人机在目标周围盘旋几秒钟。开发的框架采用劳森的感觉、过程、比较、决定和行动控制理论,分五个阶段实现预期目标。通过现场实验验证了框架中的目标检测和识别,并通过Gazebo和PX4上的各种模拟飞行验证了整个框架。实验结果表明,开发的系统的多功能性,以许多复杂的任务,其中目标的添加或删除。
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