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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Supervised vicarious calibration (SVC) of hyperspectral remote-sensing data
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Supervised vicarious calibration (SVC) of hyperspectral remote-sensing data

机译:高光谱遥感数据的监督替代校准(SVC)

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A full-chain process approach to extracting reflectance information from hyperspectral (HRS) data which is valid for all sensor qualities is proposed. This method is based on a mission-by-mission approach, followed by a unique vicarious calibration stage. As the HRS sensor's performance may vary in time and space, a vicarious calibration method to retrieve accurate at-sensor radiance values is necessary. In fact, vicarious calibration solutions usually rely on natural, well-known, bright and dark targets that are large in size and radiometrically homogeneous. Since such targets are not commonly found in the field for every mission and their spectral features can sometimes resemble artifacts in the corrected radiance, a new vicarious calibration approach is needed. This paper describes a new method that uses artificial agricultural black polyethylene nets of various densities as vicarious calibration targets that are set up along the airplane's trajectory (preferably near the airfield). The different densities of the nets combined with any bright background afford full coverage of the sensor's dynamic range. We show that these artificial targets can be used to assess data quality and correct at-sensor radiance within a short time. Several case studies are presented using Aisa-DUAL sensor data taken at different times from different locations. We found that even "lost data" (in terms of radiance drift) could be recovered by the suggested method. We term the suggested vicarious calibration approach supervised vicarious calibration (SVC) and demonstrate its performance in terms of spectral accuracy. The limitations of the method are also discussed but the overall conclusion is that the suggested procedure is functional, valuable and practical for sensors with questionable or uncertain laboratory-determined radiometric parameters.
机译:提出了一种从高光谱(HRS)数据中提取反射信息的全链过程方法,该方法对于所有传感器质量均有效。此方法基于逐个任务的方法,然后进行独特的替代校准阶段。由于HRS传感器的性能可能会在时间和空间上发生变化,因此需要一种替代方法来获取准确的传感器辐射值。实际上,替代的校准解决方案通常依赖于自然的,众所周知的,明亮和黑暗的目标,这些目标尺寸大且辐射均匀。由于此类目标并非在每个任务中都在现场发现,并且它们的光谱特征有时可能类似于校正后的辐射中的伪影,因此需要一种新的替代校准方法。本文介绍了一种新方法,该方法使用各种密度的人造农业黑色聚乙烯网作为替代标定目标,该标定目标是沿着飞机的轨迹(最好是在飞机场附近)设置的。网络的不同密度加上任何明亮的背景都可以完全覆盖传感器的动态范围。我们证明了这些人造目标可用于评估数据质量并在短时间内纠正传感器辐射。使用Aisa-DUAL传感器数据在不同时间从不同位置获取的数据进行了一些案例研究。我们发现通过建议的方法甚至可以恢复“丢失的数据”(就辐射漂移而言)。我们将建议的替代标定方法称为监督替代标定(SVC),并在光谱准确性方面证明其性能。还讨论了该方法的局限性,但总的结论是,对于具有可疑或不确定的实验室确定的辐射参数的传感器,建议的过程是实用,有价值和实用的。

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