Spatially continuous snow depth mapping by aeroplane photogrammetry for annual peak of winter from 2017 to 2021 in open areas
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Published:2023-08-22
Issue:8
Volume:17
Page:3383-3408
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ISSN:1994-0424
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Container-title:The Cryosphere
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language:en
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Short-container-title:The Cryosphere
Author:
Bührle Leon J., Marty Mauro, Eberhard Lucie A.ORCID, Stoffel Andreas, Hafner Elisabeth D.ORCID, Bühler YvesORCID
Abstract
Abstract. Information on snow depth and its spatial distribution is important for
numerous applications, including natural hazard management, snow water
equivalent estimation for hydropower, the study of the distribution and
evolution of flora and fauna, and the validation of snow hydrological
models. Due to its heterogeneity and complexity, specific remote sensing
tools are required to accurately map the snow depth distribution in Alpine
terrain. To cover large areas (>100 km2),
airborne laser scanning (ALS) or aerial photogrammetry with large-format
cameras is needed. While both systems require piloted aircraft for data
acquisition, ALS is typically more expensive than photogrammetry but yields
better results in forested terrain. While photogrammetry is slightly
cheaper, it is limited due to its dependency on favourable acquisition
conditions (weather, light conditions). In this study, we present
photogrammetrically processed high-spatial-resolution (0.5 m) annual snow
depth maps, recorded during the peak of winter over a 5-year period under
different acquisition conditions over a study area around Davos,
Switzerland. Compared to previously carried out studies, using the Vexcel
UltraCam Eagle Mark 3 (M3) sensor improves the average ground sampling distance to
0.1 m at similar flight altitudes above ground. This allows for very
detailed snow depth maps in open areas, calculated by subtracting a snow-off
digital terrain model (DTM, acquired with ALS) from the snow-on digital
surface models (DSMs) processed from the airborne imagery. Despite
challenging acquisition conditions during the recording of the UltraCam
images (clouds, shaded areas and fresh snow), 99 % of unforested areas
were successfully photogrammetrically reconstructed. We applied masks (high
vegetation, settlements, water, glaciers) to increase the reliability of the
snow depth calculations. An extensive accuracy assessment was carried out
using check points, the comparison to DSMs derived from unpiloted aerial
systems and the comparison of snow-free DSM pixels to the ALS DTM. The
results show a root mean square error of approximately 0.25 m for the
UltraCam X and 0.15 m for the successor, the UltraCam Eagle M3. We developed
a consistent and reliable photogrammetric workflow for accurate snow depth
distribution mapping over large regions, capable of analysing snow
distribution in complex terrain. This enables more detailed investigations
on seasonal snow dynamics and can be used for numerous applications related
to snow depth distribution, as well as serving as a ground reference for new
modelling approaches and satellite-based snow depth mapping.
Funder
Schweizerischer Nationalfonds zur Förderung der Wissenschaftlichen Forschung
Publisher
Copernicus GmbH
Subject
Earth-Surface Processes,Water Science and Technology
Reference94 articles.
1. Adams, M. S., Bühler, Y., and Fromm, R.: Multitemporal Accuracy and
Precision Assessment of Unmanned Aerial System Photogrammetry for
Slope-Scale Snow Depth Maps in Alpine Terrain, Pure Appl. Geophys., 175,
3303–3324, https://doi.org/10.1007/s00024-017-1748-y, 2018. 2. Agisoft LLC: Agisoft Metashape User Manual: Professional Edition, Version
1.6, St. Petersburg, https://www.agisoft.com/pdf/metashape-pro_1_6_en.pdf (last access: 20 July 2022), 2020. 3. Alonso-González, E., Aalstad, K., Baba, M. W., Revuelto, J., López-Moreno, J. I., Fiddes, J., Essery, R., and Gascoin, S.: The Multiple Snow Data Assimilation System (MuSA v1.0), Geosci. Model Dev., 15, 9127–9155, https://doi.org/10.5194/gmd-15-9127-2022, 2022. 4. Avanzi, F., Bianchi, A., Cina, A., Michele, C. de, Maschio, P., Pagliari,
D., Passoni, D., Pinto, L., Piras, M., and Rossi, L.: Centimetric Accuracy
in Snow Depth Using Unmanned Aerial System Photogrammetry and a
MultiStation, Remote Sens., 10, 765, https://doi.org/10.3390/rs10050765,
2018. 5. Brauchli, T., Trujillo, E., Huwald, H., and Lehning, M.: Influence of
Slope-Scale Snowmelt on Catchment Response Simulated With the Alpine3D
Model, Water Resour. Res., 53, 10723–10739,
https://doi.org/10.1002/2017WR021278, 2017.
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