Buunk Thomas, Vélez Sergio, Ariza-Sentís Mar, Valente João
Laboratory of Geo-Information Sciences and Remote Sensing, Wageningen University & Research, 6708 PB Wageningen, The Netherlands.
Information Technology Group, Wageningen University & Research, 6708 PB Wageningen, The Netherlands.
Sensors (Basel). 2023 Oct 21;23(20):8625. doi: 10.3390/s23208625.
Unmanned Aerial Vehicle (UAV) thermal imagery is rapidly becoming an essential tool in precision agriculture. Its ability to enable widespread crop status assessment is increasingly critical, given escalating water demands and limited resources, which drive the need for optimizing water use and crop yield through well-planned irrigation and vegetation management. Despite advancements in crop assessment methodologies, including the use of vegetation indices, 2D mapping, and 3D point cloud technologies, some aspects remain less understood. For instance, mission plans often capture nadir and oblique images simultaneously, which can be time- and resource-intensive, without a clear understanding of each image type's impact. This issue is particularly critical for crops with specific growth patterns, such as woody crops, which grow vertically. This research aims to investigate the role of nadir and oblique images in the generation of CWSI (Crop Water Stress Index) maps and CWSI point clouds, that is 2D and 3D products, in woody crops for precision agriculture. To this end, products were generated using Agisoft Metashape, ArcGIS Pro, and CloudCompare to explore the effects of various flight configurations on the final outcome, seeking to identify the most efficient workflow for each remote sensing product. A linear regression analysis reveals that, for generating 2D products (orthomosaics), combining flight angles is redundant, while 3D products (point clouds) are generated equally from nadir and oblique images. Volume calculations show that combining nadir and oblique flights yields the most accurate results for CWSI point clouds compared to LiDAR in terms of geometric representation (R = 0.72), followed by the nadir flight (R = 0.68), and, finally, the oblique flight (R = 0.54). Thus, point clouds offer a fuller perspective of the canopy. To our knowledge, this is the first time that CWSI point clouds have been used for precision viticulture, and this knowledge can aid farm managers, technicians, or UAV pilots in optimizing the capture of UAV image datasets in line with their specific goals.
无人机热成像正迅速成为精准农业中的一项重要工具。鉴于水资源需求不断增加且资源有限,这使得通过精心规划灌溉和植被管理来优化水资源利用和作物产量的需求愈发迫切,而无人机热成像能够实现广泛的作物状况评估,其重要性日益凸显。尽管作物评估方法取得了进展,包括使用植被指数、二维测绘和三维点云技术,但仍有一些方面尚未得到充分理解。例如,任务计划通常会同时采集天底和倾斜图像,这可能既耗时又耗费资源,而且对每种图像类型的影响缺乏清晰认识。对于具有特定生长模式的作物,如垂直生长的木本作物,这个问题尤为关键。本研究旨在调查天底和倾斜图像在木本作物精准农业中生成作物水分胁迫指数(CWSI)地图和CWSI点云(即二维和三维产品)方面的作用。为此,使用Agisoft Metashape、ArcGIS Pro和CloudCompare生成产品,以探索各种飞行配置对最终结果的影响,力求为每种遥感产品确定最有效的工作流程。线性回归分析表明,对于生成二维产品(正射镶嵌图),组合飞行角度是多余的,而三维产品(点云)由天底和倾斜图像同等生成。体积计算表明,与激光雷达相比,组合天底和倾斜飞行在几何表示方面为CWSI点云产生的结果最准确(R = 0.72),其次是天底飞行(R = 0.68),最后是倾斜飞行(R = 0.54)。因此,点云提供了树冠更全面的视角。据我们所知,这是首次将CWSI点云用于精准葡萄栽培,这一知识可帮助农场管理人员、技术人员或无人机飞行员根据其特定目标优化无人机图像数据集的采集。