Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain
The monitoring of snow-covered surfaces on Earth is largely facilitated by the wealth of satellite data available, with increasing spatial resolution and temporal coverage over the last few years. Yet to date, retrievals of snow physical properties still remain complicated in mountainous areas, owin...
Published in: | The Cryosphere |
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Online Access: | https://research.vu.nl/en/publications/388c2e0a-9f70-43df-b61d-0d5e1e5f5eba https://doi.org/10.5194/tc-14-3995-2020 https://hdl.handle.net/1871.1/388c2e0a-9f70-43df-b61d-0d5e1e5f5eba |
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ftvuamstcris:oai:research.vu.nl:publications/388c2e0a-9f70-43df-b61d-0d5e1e5f5eba 2024-11-03T15:00:02+00:00 Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain Lamare, Maxim Dumont, Marie Picard, Ghislain Larue, Fanny Tuzet, François Delcourt, Clément Arnaud, Laurent 2020-11-14 https://research.vu.nl/en/publications/388c2e0a-9f70-43df-b61d-0d5e1e5f5eba https://doi.org/10.5194/tc-14-3995-2020 https://hdl.handle.net/1871.1/388c2e0a-9f70-43df-b61d-0d5e1e5f5eba eng eng info:eu-repo/semantics/openAccess Lamare , M , Dumont , M , Picard , G , Larue , F , Tuzet , F , Delcourt , C & Arnaud , L 2020 , ' Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain ' , The Cryosphere , vol. 14 , no. 11 , 3995 , pp. 3995-4020 . https://doi.org/10.5194/tc-14-3995-2020 article 2020 ftvuamstcris https://doi.org/10.5194/tc-14-3995-2020 2024-10-24T00:28:02Z The monitoring of snow-covered surfaces on Earth is largely facilitated by the wealth of satellite data available, with increasing spatial resolution and temporal coverage over the last few years. Yet to date, retrievals of snow physical properties still remain complicated in mountainous areas, owing to the complex interactions of solar radiation with terrain features such as multiple scattering between slopes, exacerbated over bright surfaces. Existing physically based models of solar radiation across rough scenes are either too complex and resource-demanding for the implementation of systematic satellite image processing, not designed for highly reflective surfaces such as snow, or tied to a specific satellite sensor. This study proposes a new formulation, combining a forward model of solar radiation over rugged terrain with dedicated snow optics into a flexible multi-sensor tool that bridges a gap in the optical remote sensing of snow-covered surfaces in mountainous regions. The model presented here allows one to perform rapid calculations over large snow-covered areas. Good results are obtained even for extreme cases, such as steep shadowed slopes or, on the contrary, strongly illuminated sun-facing slopes. Simulations of Sentinel-3 OLCI (Ocean and Land Colour Instrument) scenes performed over a mountainous region in the French Alps allow us to reduce the bias by up to a factor of 6 in the visible wavelengths compared to methods that account for slope inclination only. Furthermore, the study underlines the contribution of the individual fluxes to the total top-of-atmosphere radiance, highlighting the importance of reflected radiation from surrounding slopes which, in midwinter after a recent snowfall (13 February 2018), accounts on average for 7 % of the signal at 400 nm and 16 % at 1020 nm (on 13 February 2018), as well as of coupled diffuse radiation scattered by the neighbourhood, which contributes to 18 % at 400 nm and 4 % at 1020 nm. Given the importance of these contributions, accounting for slopes and ... Article in Journal/Newspaper The Cryosphere Vrije Universiteit Amsterdam (VU): Research Portal Midwinter ENVELOPE(139.931,139.931,-66.690,-66.690) The Cryosphere 14 11 3995 4020 |
institution |
Open Polar |
collection |
Vrije Universiteit Amsterdam (VU): Research Portal |
op_collection_id |
ftvuamstcris |
language |
English |
description |
The monitoring of snow-covered surfaces on Earth is largely facilitated by the wealth of satellite data available, with increasing spatial resolution and temporal coverage over the last few years. Yet to date, retrievals of snow physical properties still remain complicated in mountainous areas, owing to the complex interactions of solar radiation with terrain features such as multiple scattering between slopes, exacerbated over bright surfaces. Existing physically based models of solar radiation across rough scenes are either too complex and resource-demanding for the implementation of systematic satellite image processing, not designed for highly reflective surfaces such as snow, or tied to a specific satellite sensor. This study proposes a new formulation, combining a forward model of solar radiation over rugged terrain with dedicated snow optics into a flexible multi-sensor tool that bridges a gap in the optical remote sensing of snow-covered surfaces in mountainous regions. The model presented here allows one to perform rapid calculations over large snow-covered areas. Good results are obtained even for extreme cases, such as steep shadowed slopes or, on the contrary, strongly illuminated sun-facing slopes. Simulations of Sentinel-3 OLCI (Ocean and Land Colour Instrument) scenes performed over a mountainous region in the French Alps allow us to reduce the bias by up to a factor of 6 in the visible wavelengths compared to methods that account for slope inclination only. Furthermore, the study underlines the contribution of the individual fluxes to the total top-of-atmosphere radiance, highlighting the importance of reflected radiation from surrounding slopes which, in midwinter after a recent snowfall (13 February 2018), accounts on average for 7 % of the signal at 400 nm and 16 % at 1020 nm (on 13 February 2018), as well as of coupled diffuse radiation scattered by the neighbourhood, which contributes to 18 % at 400 nm and 4 % at 1020 nm. Given the importance of these contributions, accounting for slopes and ... |
format |
Article in Journal/Newspaper |
author |
Lamare, Maxim Dumont, Marie Picard, Ghislain Larue, Fanny Tuzet, François Delcourt, Clément Arnaud, Laurent |
spellingShingle |
Lamare, Maxim Dumont, Marie Picard, Ghislain Larue, Fanny Tuzet, François Delcourt, Clément Arnaud, Laurent Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain |
author_facet |
Lamare, Maxim Dumont, Marie Picard, Ghislain Larue, Fanny Tuzet, François Delcourt, Clément Arnaud, Laurent |
author_sort |
Lamare, Maxim |
title |
Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain |
title_short |
Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain |
title_full |
Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain |
title_fullStr |
Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain |
title_full_unstemmed |
Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain |
title_sort |
simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain |
publishDate |
2020 |
url |
https://research.vu.nl/en/publications/388c2e0a-9f70-43df-b61d-0d5e1e5f5eba https://doi.org/10.5194/tc-14-3995-2020 https://hdl.handle.net/1871.1/388c2e0a-9f70-43df-b61d-0d5e1e5f5eba |
long_lat |
ENVELOPE(139.931,139.931,-66.690,-66.690) |
geographic |
Midwinter |
geographic_facet |
Midwinter |
genre |
The Cryosphere |
genre_facet |
The Cryosphere |
op_source |
Lamare , M , Dumont , M , Picard , G , Larue , F , Tuzet , F , Delcourt , C & Arnaud , L 2020 , ' Simulating optical top-of-atmosphere radiance satellite images over snow-covered rugged terrain ' , The Cryosphere , vol. 14 , no. 11 , 3995 , pp. 3995-4020 . https://doi.org/10.5194/tc-14-3995-2020 |
op_rights |
info:eu-repo/semantics/openAccess |
op_doi |
https://doi.org/10.5194/tc-14-3995-2020 |
container_title |
The Cryosphere |
container_volume |
14 |
container_issue |
11 |
container_start_page |
3995 |
op_container_end_page |
4020 |
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1814718387517915136 |