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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >The use of suitable pseudo-invariant targets for MIVIS data calibration by the empirical line method
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The use of suitable pseudo-invariant targets for MIVIS data calibration by the empirical line method

机译:通过经验线法将合适的伪不变目标用于MIVIS数据校准

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摘要

The Empirical Line Method (ELM) enables the calibration of multi- and hyper-airborne/satellite image converting DN or radiance to reflectance values performed by using at ground data. High quality outcome can be reached with the selection of appropriate Pseudo-Invariant Targets (PIT). In this paper, spectral variability of "usual" (asphalt and concrete) and "unusual" (calcareous gravel, basaltic paving, concrete bricks, tartan paving and artificial turf) PITs is retrieved for ELM application. Such PITs are used to calibrate the Multispectral Infrared and Visible Imaging Spectrometer (MIVIS) airborne sensor in 12 different Runs. Firstly, processing of field spectral data enables the evaluation of pseudo-invariance of targets by studying their spectral changes in space and in time. Finally, these surfaces are used as Ground Calibration (GCT) and Validation Targets (GVT) in ELM. High calibration accuracy values are observed in Visible (VIS) range (98.9%) while a general decrease of accuracy in Near-InfraRed (NIR) (96.6%) and Middle-InfraRed (SWIR) (88.1%) are reached. Outcomes show that "usual" surfaces as asphalt and concrete and "unusual" surfaces such as tartan can be successfully used for MIVIS image calibration. (C) 2016 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:经验线法(ELM)可以校准多空和超机载/卫星图像,将DN或辐射率转换为通过使用地面数据执行的反射率值。通过选择适当的伪不变目标(PIT),可以达到高质量的结果。在本文中,检索了“常规”(沥青和混凝土)和“非常规”(石灰石,玄武岩铺路,混凝土砖,格子呢铺路和人造草皮)PIT的光谱变异性,以用于ELM应用。此类PIT用于在12个不同的运行中校准多光谱红外和可见成像光谱仪(MIVIS)机载传感器。首先,对现场光谱数据的处理可以通过研究目标物在空间和时间上的光谱变化来评估目标的伪不变性。最后,这些表面在ELM中用作地面校准(GCT)和验证目标(GVT)。在可见光(VIS)范围内观察到较高的校准精度值(98.9%),而近红外(NIR)(96.6%)和中红外(SWIR)(88.1%)的精度普遍下降。结果表明,“正常”表面(如沥青和混凝土)和“异常”表面(如格子呢)可以成功用于MIVIS图像校准。 (C)2016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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