Abstract. The Theia Snow
collection routinely provides high-resolution maps of the snow-covered area from Sentinel-2 and Landsat-8 observations. The collection covers
selected areas worldwide, including the main mountain regions in western
Europe (e.g. Alps, Pyrenees) and the High Atlas in Morocco. Each product of
the Theia Snow collection contains four classes: snow, no snow, cloud and no data.
We present the algorithm to generate the snow products and provide an
evaluation of the accuracy of Sentinel-2 snow products using in situ snow depth
measurements, higher-resolution snow maps and visual control. The results
suggest that the snow is accurately detected in the Theia snow collection
and that the snow detection is more accurate than the Sen2Cor outputs (ESA
level 2 product). An issue that should be addressed in a future release is
the occurrence of false snow detection in some large clouds. The snow maps
are currently produced and freely distributed on average 5 d after the image
acquisition as raster and vector files via the Theia portal
(https://doi.org/10.24400/329360/F7Q52MNK).
Sentinel-2 provides the opportunity to map the snow cover at unprecedented spatial and temporal resolutions on a global scale. Here we calibrate and evaluate a simple empirical function to estimate the fractional snow cover (FSC) in open terrains using the normalized difference snow index (NDSI) from 20 m resolution Sentinel-2 images. The NDSI is computed from flat surface reflectance after masking cloud and snow-free areas. The NDSI–FSC function is calibrated using Pléiades very high-resolution images and evaluated using independent datasets including SPOT 6/7 satellite images, time lapse camera photographs, terrestrial lidar scans and crowd-sourced in situ measurements. The calibration results show that the FSC can be represented with a sigmoid-shaped function 0.5 × tanh(a × NDSI + b) + 0.5, where a = 2.65 and b = −1.42, yielding a root mean square error (RMSE) of 25%. Similar RMSE are obtained with different evaluation datasets with a high topographic variability. With this function, we estimate that the confidence interval on the FSC retrievals is 38% at the 95% confidence level.
Abstract. The Theia Snow collection routinely provides high resolution maps of the snow cover area from Sentinel-2 and Landsat-8 observations. The collection covers selected areas worldwide including the main mountain regions in Western Europe (e.g. Alps, Pyrenees) and the High Atlas in Morocco. Each product of the Snow collection contains four classes: snow, no-snow, cloud and no-data. We present the algorithm to generate the snow products and provide an evaluation of their accuracy using in situ snow depth measurements, higher resolution snow maps, and visual control. The results suggest that the snow is accurately detected in the Theia snow collection, and that the snow detection is more accurate than the sen2cor outputs (ESA level 2 product). An issue that should be addressed in a future release is the occurrence of false snow detection in some large clouds. The snow maps are currently produced and freely distributed in average 5 days after the image acquisition as raster and vector files via the Theia portal (http://doi.org/10.24400/329360/F7Q52MNK).
Abstract. The High Resolution Snow & Ice Monitoring Service was launched
in 2020 to provide near-real-time, pan-European snow and ice information at
20 m resolution from Sentinel-2 observations. Here we present an evaluation
of the snow detection using a database of snow depth observations from 1764
stations across Europe over the hydrological year 2016–2017. We find a good
agreement between both datasets with an accuracy (proportion of correct
classifications) of 94 % and kappa of 0.81. More accurate (+6 % kappa)
retrievals are obtained by excluding low-quality pixels at the cost of a
reduced coverage (−13 % data).
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