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An improvement of snow/cloud discrimination from machine learning using geostationary satellite data
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作者 Donghyun Jin Kyeong-Sang Lee +7 位作者 Sungwon Choi Noh-Hun Seong Daeseong Jung Suyoung Sim Jongho Woo Uujin Jeon Yugyeong Byeon Kyung-Soo Han 《International Journal of Digital Earth》 SCIE EI 2022年第1期2355-2375,共21页
Snow and cloud discrimination is a main factor contributing to errors in satellite-based snow cover.To address the error,satellite-based snow cover performs snow reclassification tests on the cloud pixels of the cloud... Snow and cloud discrimination is a main factor contributing to errors in satellite-based snow cover.To address the error,satellite-based snow cover performs snow reclassification tests on the cloud pixels of the cloud mask,but the error still remains.Machine Learning(ML)has recently been applied to remote sensing to calculate satellite-based meteorological data,and its utility has been demonstrated.In this study,snow and cloud discrimination errors were analyzed for GK-2A/AMI snow cover,and ML models(Random Forest and Deep Neural Network)were applied to accurately distinguish snow and clouds.The ML-based snow reclassified was integrated with the GK-2A/AMI snow cover through post-processing.We used the S-NPP/VIIRS snow cover and ASOS in situ snow observation data,which are satellite-based snow cover and ground truth data,as validation data to evaluate whether the snow/cloud discrimination is improved.The ML-based integrated snow cover detected 33–53%more snow compared to the GK-2A/AMI snow cover.In terms of performance,the F1-score and overall accuracy of the GK-2A/AMI snow cover was 73.06%and 89.99%,respectively,and those of the integrated snow cover were 76.78–78.28%and 90.93–91.26%,respectively. 展开更多
关键词 Geostationary satellite gk-2a/ami snow cover product snow/cloud discrimination machine learning remote sensing
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