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首页> 外文期刊>Remote Sensing in Ecology and Conservation >UAV hyperspectral and lidar data and their fusion for arid and semi‐arid land vegetation monitoring
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UAV hyperspectral and lidar data and their fusion for arid and semi‐arid land vegetation monitoring

机译:无人机高光谱和激光雷达数据及其融合,用于干旱和半干旱土地植被监测

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摘要

Unmanned aerial vehicles (UAVs) provide a new research tool to obtain high spatial and temporal resolution imagery at a reduced cost. Rapid advances in miniature sensor technology are leading to greater potentials for ecological research. We demonstrate one of the first applications of UAV lidar and hyperspectral imagery and a fusion method for individual plant species identification and 3D characterization at submeter scales in south‐eastern Arizona, USA. The UAV lidar scanner characterized the individual vegetation canopy structure and bare ground elevation, whereas the hyperspectral sensor provided species‐specific spectral signatures for the dominant and target species at our study area in leaf‐on condition. We hypothesized that the fusion of the two different data sources would perform better than either data type alone in the arid and semi‐arid ecosystems with sparse vegetation. The fusion approach provides 84–89% overall accuracy (kappa values of 0.80–0.86) in target species classification at the canopy scale, leveraging a wide range of target spectral responses in the hyperspectral data and a high point density (50 points/m 2 ) in the lidar data. In comparison, the hyperspectral image classification alone produced 72–76% overall accuracies (kappa values of 0.70 and 0.71). The UAV lidar‐derived digital elevation model (DEM) is also strongly correlated with manned airborne lidar‐derived DEM ( R 2? =?0.98 and 0.96), but was obtained at a lower cost. The lidar and hyperspectral data as well as the fusion method demonstrated here can be widely applied across a gradient of vegetation and topography to monitor and detect ecological changes at a local scale.
机译:无人机(UAV)提供了一种新的研究工具,可以以较低的成本获得高时空分辨率的图像。微型传感器技术的飞速发展为生态研究带来了更大的潜力。我们展示了无人机激光雷达和高光谱图像的首次应用之一,以及一种融合方法,用于在美国亚利桑那州东南部的亚米尺度上对单个植物物种进行识别和3D表征。 UAV激光雷达扫描仪可对单个植被冠层结构和裸露的地面高程进行表征,而高光谱传感器则为我们研究区域中处于叶片状态的优势和目标物种提供了特定物种的光谱特征。我们假设在植被稀疏的干旱和半干旱生态系统中,两种不同数据源的融合要比单独使用任一数据类型的融合性能更好。融合方法利用高光谱数据中的目标光谱响应范围广和高点密度(50点/ m 2),可在冠层尺度上对目标物种分类提供84-89%的整体准确性(kappa值在0.80-0.86)。 )在激光雷达数据中。相比之下,仅高光谱图像分类就可产生72-76%的总体准确度(kappa值为0.70和0.71)。无人机激光雷达衍生的数字高程模型(DEM)也与有人机载激光雷达衍生的DEM(R 2?=?0.98和0.96)密切相关,但成本较低。此处显示的激光雷达和高光谱数据以及融合方法可广泛应用于植被和地形的梯度,以监测和检测局部尺度的生态变化。

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