首页> 外文期刊>Remote Sensing >Radiometric Correction of Simultaneously Acquired Landsat-7/Landsat-8 and Sentinel-2A Imagery Using Pseudoinvariant Areas (PIA): Contributing to the Landsat Time Series Legacy
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Radiometric Correction of Simultaneously Acquired Landsat-7/Landsat-8 and Sentinel-2A Imagery Using Pseudoinvariant Areas (PIA): Contributing to the Landsat Time Series Legacy

机译:使用伪不变区域(PIA)对同时获取的Landsat-7 / Landsat-8和Sentinel-2A影像进行辐射校正:有助于Landsat时间序列的遗留问题

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The use of Pseudoinvariant Areas (PIA) makes it possible to carry out a reasonably robust and automatic radiometric correction for long time series of remote sensing imagery, as shown in previous studies for large data sets of Landsat MSS, TM, and ETM+ imagery. In addition, they can be employed to obtain more coherence among remote sensing data from different sensors. The present work validates the use of PIA for the radiometric correction of pairs of images acquired almost simultaneously (Landsat-7 (ETM+) or Landsat-8 (OLI) and Sentinel-2A (MSI)). Four pairs of images from a region in SW Spain, corresponding to four different dates, together with field spectroradiometry measurements collected at the time of satellite overpass were used to evaluate a PIA-based radiometric correction. The results show a high coherence between sensors ( r 2 = 0.964) and excellent correlations to in-situ data for the MiraMon implementation ( r 2 > 0.9). Other methodological alternatives, ATCOR3 (ETM+, OLI, MSI), SAC-QGIS (ETM+, OLI, MSI), 6S-LEDAPS (ETM+), 6S-LaSRC (OLI), and Sen2Cor-SNAP (MSI), were also evaluated. Almost all of them, except for SAC-QGIS, provided similar results to the proposed PIA-based approach. Moreover, as the PIA-based approach can be applied to almost any image (even to images lacking of extra atmospheric information), it can also be used to solve the robust integration of data from new platforms, such as Landsat-8 or Sentinel-2, to enrich global data acquired since 1972 in the Landsat program. It thus contributes to the program?¢????s continuity, a goal of great interest for the environmental, scientific, and technical community.
机译:如先前对Landsat MSS,TM和ETM +图像的大型数据集的研究所示,使用伪不变区域(PIA)可以对长时间序列的遥感影像进行合理的鲁棒性和自动辐射校正。另外,它们可用于在来自不同传感器的遥感数据之间获得更大的一致性。本工作验证了PIA在几乎同时采集的图像对(Landsat-7(ETM +)或Landsat-8(OLI)和Sentinel-2A(MSI))的辐射校正中的应用。来自西班牙西南部地区的对应于四个不同日期的四对图像,以及在卫星通过时收集的现场光谱辐射测量值,被用于评估基于PIA的辐射校正。结果表明,传感器之间具有较高的相干性(r 2 = 0.964),并且与MiraMon实现的现场数据具有极好的相关性(r 2> 0.9)。还评估了其他方法替代方法,如ATCOR3(ETM +,OLI,MSI),SAC-QGIS(ETM +,OLI,MSI),6S-LEDAPS(ETM +),6S-LaSRC(OLI)和Sen2Cor-SNAP(MSI)。除了SAC-QGIS,几乎所有这些方法都提供了与基于PIA的方法类似的结果。此外,由于基于PIA的方法几乎可以应用于任何图像(甚至是缺少额外大气信息的图像),因此它也可以用于解决来自新平台(如Landsat-8或Sentinel- 2,以充实自1972年以来在Landsat计划中获得的全球数据。因此,它有助于该计划的连续性,这是环保,科学和技术界极为关注的目标。

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