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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Development of the Landsat Data Continuity Mission Cloud-Cover Assessment Algorithms
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Development of the Landsat Data Continuity Mission Cloud-Cover Assessment Algorithms

机译:Landsat数据连续性任务云覆盖评估算法的开发

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摘要

The upcoming launch of the Operational Land Imager (OLI) will start the next era of the Landsat program. However, the Automated Cloud-Cover Assessment (CCA) (ACCA) algorithm used on Landsat 7 requires a thermal band and is thus not suited for OLI. There will be a thermal instrument on the Landsat Data Continuity Mission (LDCM)-the Thermal Infrared Sensor-which may not be available during all OLI collections. This illustrates a need for CCA for LDCM in the absence of thermal data. To research possibilities for full-resolution OLI cloud assessment, a global data set of 207 Landsat 7 scenes with manually generated cloud masks was created. It was used to evaluate the ACCA algorithm, showing that the algorithm correctly classified 79.9% of a standard test subset of 3.95 109 pixels. The data set was also used to develop and validate two successor algorithms for use with OLI data-one derived from an off-the-shelf machine learning package and one based on ACCA but enhanced by a simple neural network. These comprehensive CCA algorithms were shown to correctly classify pixels as cloudy or clear 88.5% and 89.7% of the time, respectively.
机译:即将发布的“作战陆地成像仪”(OLI)将开启Landsat计划的下一个时代。但是,Landsat 7上使用的自动云覆盖评估(CCA)(ACCA)算法需要一个热带,因此不适合OLI。 Landsat数据连续性任务(LDCM)上将配备一个热仪器-热红外传感器-在所有OLI收集期间可能无法使用。这说明在缺少热数据的情况下,需要LDCM的CCA。为了研究进行全分辨率OLI云评估的可能性,创建了207个Landsat 7场景的全球数据集,其中包括人工生成的云遮罩。它被用于评估ACCA算法,表明该算法正确地对3.95个10 9 像素的标准测试子集的79.9%进行了分类。该数据集还用于开发和验证两种用于OLI数据的后继算法-一种是从现成的机器学习包中衍生而来的,另一种是基于ACCA但通过简单神经网络进行了增强的算法。这些全面的CCA算法显示正确地分别将像素分类为多云或清晰的时间分别为88.5%和89.7%。

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