Litcius/Paper detail

Estimating Fractional Snow Cover in Open Terrain from Sentinel-2 Using the Normalized Difference Snow Index

Simon Gascoin, Zacharie Barrou Dumont, César Deschamps‐Berger, Florence Marti, Germain Salgues, Juan Ignacio López‐Moreno, Jesús Revuelto, Timothée Michon, Paul Schattan, Olivier Hagolle

2020Remote Sensing62 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

TerrainSnowRemote sensingSnow coverMean squared errorEnvironmental scienceGeologyMathematicsGeographyCartographyStatisticsGeomorphologyCryospheric studies and observationsWinter Sports Injuries and PerformanceClimate change and permafrost