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Autonomous UAV with vision based on-board decision making for remote sensing and precision agriculture

机译:基于视觉的自主无人机用于遥感和精准农业的机载决策

摘要

In recent years, a phenomenal increase in the development of (UAVs) has been observed in a broad range of applications in various fields of study. Precision agriculture has emerged as a major field of interest, integrating unmanned monitoring of crop health into general agricultural practices for researchers are utilizing UAV to collect data for post-analysis. This paper describes a modular and generic system that is able to control the UAV using computer vision. A configuration approach similar to the (OODA) loop has been implemented to allow the system to perform on-board decision making. The detection of an object of interest is performed by computer vision functionality. This allows the UAV to change its planned path accordingly and approach the target in order to perform a close inspection, or conduct a manoeuvres such as the application of herbicide or collection of higher resolution agricultural images.ududThe results show the ability of the developed system to dynamically change its current goal and implement an inspection manoeuvre to perform necessary actions after detecting the target. The vision based navigation system and on-board decision making were demonstrated in three types of tests: detection, colour detection and weed detection. The results are measured based on the sensitivity and the selectivity of the algorithm. The sensitivity is the ability of the algorithm to identify and detect the true positive target while the selectivity is the capability of the algorithm to filter out the false negatives for detection targets. Results indicate that the system is capable of detecting with 99% sensitivity and 100% selectivity at 5 m above the ground level. The system is also capable of detecting a red target with 96% sensitivity and 99% selectivity at the same height during a test height at 5 metres. This system has potential applicability in the field of precision agriculture such as, crop health monitoring, pest plant detection which causes detrimental financial damage to crop yields if not noticed at an early stage.
机译:近年来,已在各种研究领域的广泛应用中观察到(UAV)发展的惊人增长。精确农业已经成为人们关注的一个主要领域,它将无人驾驶的作物健康监测纳入一般的农业实践中,以供研究人员利用无人机收集数据进行后分析。本文介绍了一种模块化的通用系统,该系统能够使用计算机视觉来控制无人机。已实现类似于(OODA)循环的配置方法,以允许系统执行机载决策。通过计算机视觉功能执行对感兴趣对象的检测。这使无人机可以相应地更改其计划路径并接近目标,以便进行仔细检查,或进行诸如除草剂的应用或收集更高分辨率的农业图像之类的动作。 ud ud结果显示了无人机的能力。开发的系统可以动态更改其当前目标,并执行检查操作以在检测到目标后执行必要的操作。基于视觉的导航系统和机载决策在三种类型的测试中得到了证明:检测,颜色检测和杂草检测。根据算法的灵敏度和选择性来测量结果。灵敏度是算法识别和检测真实阳性目标的能力,而选择性是算法过滤掉检测目标的假阴性的能力。结果表明,该系统能够在距地面5 m处以99%的灵敏度和100%的选择性进行检测。该系统还能够在5米的测试高度下,在相同高度下以96%的灵敏度和99%的选择性检测红色目标。该系统在精确农业领域中具有潜在的适用性,例如作物健康监测,病虫害植物检测,如果在早期阶段没有注意到的话,这会对作物产量造成不利的财务损失。

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