6533b872fe1ef96bd12d3152

RESEARCH PRODUCT

Multitemporal Cloud Masking in the Google Earth Engine

Gustau Camps-vallsJordi Munoz-mariLuis Gómez-chovaJulia Amorós-lópezGonxalo Mateo-garcia

subject

Masking (art)010504 meteorology & atmospheric sciencesComputer scienceScienceOptical instrumentReal-time computing0211 other engineering and technologiesCloud detectionCloud computing02 engineering and technologyEarth observation satellite01 natural scienceslaw.inventionmultitemporal analysislawSatellite imageLandsat-8change detection021101 geological & geomatics engineering0105 earth and related environmental sciencesbusiness.industryQGoogle Earth Engine (GEE)cloud maskingPower (physics)General Earth and Planetary Sciencesbusinessimage time seriesChange detection

description

The exploitation of Earth observation satellite images acquired by optical instruments requires an automatic and accurate cloud detection. Multitemporal approaches to cloud detection are usually more powerful than their single scene counterparts since the presence of clouds varies greatly from one acquisition to another whereas surface can be assumed stationary in a broad sense. However, two practical limitations usually hamper their operational use: the access to the complete satellite image archive and the required computational power. This work presents a cloud detection and removal methodology implemented in the Google Earth Engine (GEE) cloud computing platform in order to meet these requirements. The proposed methodology is tested for the Landsat-8 mission over a large collection of manually labeled cloud masks from the Biome dataset. The quantitative results show state-of-the-art performance compared with mono-temporal standard approaches, such as FMask and ACCA algorithms, yielding improvements between 4–5% in classification accuracy and 3–10% in commission errors. The algorithm implementation within the Google Earth Engine and the generated cloud masks for all test images are released for interested readers.

10.3390/rs10071079http://dx.doi.org/10.3390/rs10071079