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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Generating 3D hyperspectral information with lightweight UAV snapshot cameras for vegetation monitoring: From camera calibration to quality assurance
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Generating 3D hyperspectral information with lightweight UAV snapshot cameras for vegetation monitoring: From camera calibration to quality assurance

机译:使用轻型无人机快照相机生成3D高光谱信息以进行植被监测:从相机校准到质量保证

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This paper describes a novel method to derive 3D hyperspectral information from lightweight snapshot cameras for unmanned aerial vehicles for vegetation monitoring. Snapshot cameras record an image cube with one spectral and two spatial dimensions with every exposure. First, we describe and apply methods to radiometrically characterize and calibrate these cameras. Then, we introduce our processing chain to derive 3D hyperspectral information from the calibrated image cubes based on structure from motion. The approach includes a novel way for quality assurance of the data which is used to assess the quality of the hyperspectral data for every single pixel in the final data product. The result is a hyperspectral digital surface model as a representation of the surface in 3D space linked with the hyperspectral information emitted and reflected by the objects covered by the surface. In this study we use the hyperspectral camera Cubert UHD 185-Firefly, which collects 125 bands from 450 to 950 nm. The obtained data product has a spatial resolution of approximately 1 cm for the spatial and 21 cm for the hyperspectral information. The radiometric calibration yields good results with less than 1% offset in reflectance compared to an ASD FieldSpec 3 for most of the spectral range. The quality assurance information shows that the radiometric precision is better than 0.13% for the derived data product. We apply the approach to data from a flight campaign in a barley experiment with different varieties during the growth stage heading (BBCH 52 - 59) to demonstrate the feasibility for vegetation monitoring in the context of precision agriculture. The plant parameters retrieved from the data product correspond to in-field measurements of a single date field campaign for plant height (R-2 = 0.7), chlorophyll (BGI2, R-2 = 0.52), LAI (RDVI, R-2 = 032) and biomass (RDVI, R-2 = 0.29). Our approach can also be applied for other image-frame cameras as long as the individual bands of the image cube are spatially co-registered beforehand. (C) 2015 International Society for Photogrammety and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:本文介绍了一种从轻型快照相机获取3D高光谱信息的新颖方法,该无人机用于植被监测的无人机。快照相机在每次曝光时记录一个具有一个光谱和两个空间维度的图像立方体。首先,我们描述并应用方法对这些相机进行辐射特征分析和校准。然后,我们引入处理链,基于运动的结构从校准的图像立方体中获取3D高光谱信息。该方法包括一种用于数据质量保证的新颖方法,该方法用于评估最终数据产品中每个单个像素的高光谱数据的质量。结果是一个高光谱数字表面模型,作为3D空间中表面的表示,该模型与表面所覆盖的对象发出和反射的高光谱信息相关联。在这项研究中,我们使用高光谱相机Cubert UHD 185-Firefly,它收集了从450至950 nm的125个波段。所获得的数据产品的空间分辨率对于空间大约为1 cm,对于高光谱信息大约为21 cm。在大多数光谱范围内,与ASD FieldSpec 3相比,辐射度校准可获得良好的结果,反射率偏移小于1%。质量保证信息表明,派生数据产品的辐射精度优于0.13%。我们将该方法应用于在大麦试验中不同品种的大麦试验中飞行活动的数据(BBCH 52-59),以证明在精确农业中进行植被监测的可行性。从数据产品中检索到的植物参数对应于单个日期田间活动的田间测量值,其中包括株高(R-2 = 0.7),叶绿素(BGI2,R-2 = 0.52),LAI(RDVI,R-2 = 032)和生物质(RDVI,R-2 = 0.29)。只要图像立方体的各个波段在空间上预先配准,我们的方法也可以应用于其他图像相机。 (C)2015年国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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