基于无人机分辨率和波段感知的洋葱灌溉处理推断路径规划

Haoyu Niu, Tiebiao Zhao, Dong Wang, Y. Chen
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引用次数: 17

摘要

在过去的几年里,由于无人机技术和遥感传感器的发展,无人驾驶飞行器(UAV)也被称为无人机,在精准农业应用中得到了广泛的应用,如水分胁迫估计、害虫监测、作物产量估计等。然而,如何有效地收集数据仍然是一个巨大的挑战。许多无人机可调参数会对数据质量和数据分析产生重大影响,例如飞行高度、飞行时间、重叠和空速。而且,关于如何在有限的地面真值测量下提取高分辨率多光谱或热图像的研究很少。因此,本文进行了无人机分辨率和波段感知设计,以优化无人机遥感航拍图像的采集。然后,在2017年的洋葱生长季节,飞行任务设计在美国农业部的一个洋葱田进行了测试。基于研究结果,无人机成功地为农民和研究人员提供了灌溉管理的基本知识,以识别灌溉不均匀性。利用无人机收集的多光谱和热图像,我们能够应用监督学习方法来找到图像特征与洋葱灌溉处理之间的关系。该研究还发现,无人机的飞行高度和分辨率设置如何影响估计洋葱灌溉处理的准确性。不同光谱波段组合对洋葱灌溉处理预测也有影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A UAV Resolution and Waveband Aware Path Planning for Onion Irrigation Treatments Inference
In the past few years, unmanned aerial vehicles (UAVs), also called drones, have been widely used in precision agriculture applications, such as water stress estimation, pest monitoring, and crop yield estimation, because of the development of UAV technology and remote sensing sensors. However, how to collect data effectively can still be a big challenge. Many UAV tunable parameters can have significant impact on data quality and the data analysis, such as flight height, flight time, overlapping, and airspeed. And, little work has been done regarding to how to extract high-resolution multispectral or thermal images with limited ground-truth measurements. Therefore, in this paper, a UAV resolution and waveband aware design was conducted in order to optimally collecting remote sensing aerial images with drones. Then, the flight mission design was tested in an onion field at USDA (United States Department of Agriculture) during the growing season in 2017. Based on the research results, drones successfully provide farmers and researchers the fundamental knowledge of irrigation management to identify irrigation non-uniformity. Using multispectral and thermal images collected by drones, we are able to apply supervised learning methods to find the relationship between image features and onions irrigation treatments. It also found out that how drones flight height or resolution settings affect the accuracy of estimating onions irrigation treatment. Different spectral bands combination also has effect on onion irrigation treatment prediction.
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