Cloud Mask Intercomparison eXercise (CMIX): An evaluation of cloud masking algorithms for Landsat 8 and Sentinel-2

被引:118
作者
Skakun, Sergii [1 ,2 ]
Wevers, Jan [3 ]
Brockmann, Carsten [3 ]
Doxani, Georgia [4 ]
Aleksandrov, Matej [5 ]
Batic, Matej [5 ]
Frantz, David [6 ,15 ]
Gascon, Ferran [7 ]
Gomez-Chova, Luis [8 ]
Hagolle, Olivier [9 ]
Lopez-Puigdollers, Dan [8 ]
Louis, Jerome [10 ]
Lubej, Matic [5 ]
Mateo-Garcia, Gonzalo [8 ]
Osman, Julien [11 ]
Peressutti, Devis [5 ]
Pflug, Bringfried [12 ]
Puc, Jernej [5 ]
Richter, Rudolf [13 ]
Roger, Jean-Claude [1 ,2 ]
Scaramuzza, Pat [14 ]
Vermote, Eric [2 ]
Vesel, Nejc [5 ]
Zupanc, Anze [5 ]
Zust, Lojze [5 ]
机构
[1] Univ Maryland, Dept Geog Sci, Pk 1153 LeFrak Hall, College Pk, MD 20742 USA
[2] NASA, Goddard Space Flight Ctr, Code 619, Greenbelt, MD 20771 USA
[3] Brockmann Consult GmbH, D-21029 Hamburg, Germany
[4] European Space Agcy ESA ESRIN, SERCO SpA, I-00044 Frascati, Italy
[5] Sinergise LTD, Ljubljana 1000, Slovenia
[6] Humboldt Univ, Geog Dept, D-10099 Berlin, Germany
[7] European Space Res Inst ESRIN, European Space Agcy ESA, I-00044 Frascati, Italy
[8] Univ Valencia, Image Proc Lab, Valencia 46980, Spain
[9] CESBIO Unite Mixte Univ Toulouse CNES CNRS IRD, Ctr Detud Spatiales Biosphere, F-31401 Toulouse 9, France
[10] Telespazio France, F-31023 Toulouse, France
[11] Thales Serv SAS, Labege, France
[12] German Aerosp Ctr, DLR, D-12489 Berlin, Germany
[13] German Aerosp Ctr, DLR, D-82234 Wessling, Germany
[14] US Geol Survey USGS, KBR, Earth Resources Observat & Sci Ctr EROS, Sioux Falls, SD 57198 USA
[15] Trier Univ, Earth Observat & Climate Proc, D-54286 Trier, Germany
关键词
Cloud; Intercomparison; Validation; Landsat; 8; Sentinel-2; CMIX; CEOS; AUTOMATED CLOUD; COVER ASSESSMENT; SHADOW DETECTION; SNOW DETECTION; VALIDATION; IMAGES; MODELS; 6S;
D O I
10.1016/j.rse.2022.112990
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Cloud cover is a major limiting factor in exploiting time-series data acquired by optical spaceborne remote sensing sensors. Multiple methods have been developed to address the problem of cloud detection in satellite imagery and a number of cloud masking algorithms have been developed for optical sensors but very few studies have carried out quantitative intercomparison of state-of-the-art methods in this domain. This paper summarizes results of the first Cloud Masking Intercomparison eXercise (CMIX) conducted within the Committee Earth Observation Satellites (CEOS) Working Group on Calibration & Validation (WGCV). CEOS is the forum for space agency coordination and cooperation on Earth observations, with activities organized under working groups. CMIX, as one such activity, is an international collaborative effort aimed at intercomparing cloud detection algorithms for moderate-spatial resolution (10-30 m) spaceborne optical sensors. The focus of CMIX is on open and free imagery acquired by the Landsat 8 (NASA/USGS) and Sentinel-2 (ESA) missions. Ten algorithms developed by nine teams from fourteen different organizations representing universities, research centers and industry, as well as space agencies (CNES, ESA, DLR, and NASA), are evaluated within the CMIX. Those algo-rithms vary in their approach and concepts utilized which were based on various spectral properties, spatial and temporal features, as well as machine learning methods. Algorithm outputs are evaluated against existing reference cloud mask datasets. Those datasets vary in sampling methods, geographical distribution, sample unit (points, polygons, full image labels), and generation approaches (experts, machine learning, sky images). Overall, the performance of algorithms varied depending on the reference dataset, which can be attributed to differences in how the reference datasets were produced. The algorithms were in good agreement for thick cloud detection, which were opaque and had lower uncertainties in their identification, in contrast to thin/semi-transparent clouds detection. Not only did CMIX allow identification of strengths and weaknesses of existing algorithms and potential areas of improvements, but also the problems associated with the existing reference datasets. The paper concludes with recommendations on generating new reference datasets, metrics, and an analysis framework to be further exploited and additional input datasets to be considered by future CMIX activities.
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页数:22
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