Automated Classification of Terrestrial Images: The Contribution to the Remote Sensing of Snow Cover

The relation between the fraction of snow cover and the spectral behavior of the surface is a critical issue that must be approached in order to retrieve the snow cover extent from remotely sensed data. Ground-based cameras are an important source of datasets for the preparation of long time series...

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Main Authors: Roberto Salzano, Rosamaria Salvatori, Mauro Valt, Gregory Giuliani, Bruno Chatenoux, Luca Ioppi
Format: Article
Language:English
Published: MDPI AG 2019-02-01
Series:Geosciences
Subjects:
Online Access:https://www.mdpi.com/2076-3263/9/2/97
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spelling doaj-9a4f9c037013493ab8a7e3f902e02fd52020-11-25T00:02:55ZengMDPI AGGeosciences2076-32632019-02-01929710.3390/geosciences9020097geosciences9020097Automated Classification of Terrestrial Images: The Contribution to the Remote Sensing of Snow CoverRoberto Salzano0Rosamaria Salvatori1Mauro Valt2Gregory Giuliani3Bruno Chatenoux4Luca Ioppi5National Research Council of Italy, Institute of Atmospheric Pollution Research, via Madonna del Piano 10, 50019 Sesto Fiorentino (FI), ItalyNational Research Council of Italy, Institute of Atmospheric Pollution Research, via Salaria km 29,300, 00015 Monterotondo (RM), ItalyVeneto Regional Agency for Environmental Protection and Prevention, Arabba Avalanche Center, via Pradat 5, 32020 Arabba (BL), ItalyEnviroSPACE Lab, Institute for Environmental Sciences, University of Geneva, Bd Carl-Vogt 66, CH-1211 Geneva, SwitzerlandInstitute for Environmental Sciences, University of Geneva, GRID-Geneva, Bd Carl-Vogt 66, CH-1211 Geneva, SwitzerlandDepartment of Science, University of Roma TRE, l.go San Leonardo Murialdo 1, 00146 Roma, ItalyThe relation between the fraction of snow cover and the spectral behavior of the surface is a critical issue that must be approached in order to retrieve the snow cover extent from remotely sensed data. Ground-based cameras are an important source of datasets for the preparation of long time series concerning the snow cover. This study investigates the support provided by terrestrial photography for the estimation of a site-specific threshold to discriminate the snow cover. The case study is located in the Italian Alps (Falcade, Italy). The images taken over a ten-year period were analyzed using an automated snow-not-snow detection algorithm based on Spectral Similarity. The performance of the Spectral Similarity approach was initially investigated comparing the results with different supervised methods on a training dataset, and subsequently through automated procedures on the entire dataset. Finally, the integration with satellite snow products explored the opportunity offered by terrestrial photography for calibrating and validating satellite-based data over a decade.https://www.mdpi.com/2076-3263/9/2/97fractional snow coverremote sensingterrestrial photographycold regions
collection DOAJ
language English
format Article
sources DOAJ
author Roberto Salzano
Rosamaria Salvatori
Mauro Valt
Gregory Giuliani
Bruno Chatenoux
Luca Ioppi
spellingShingle Roberto Salzano
Rosamaria Salvatori
Mauro Valt
Gregory Giuliani
Bruno Chatenoux
Luca Ioppi
Automated Classification of Terrestrial Images: The Contribution to the Remote Sensing of Snow Cover
Geosciences
fractional snow cover
remote sensing
terrestrial photography
cold regions
author_facet Roberto Salzano
Rosamaria Salvatori
Mauro Valt
Gregory Giuliani
Bruno Chatenoux
Luca Ioppi
author_sort Roberto Salzano
title Automated Classification of Terrestrial Images: The Contribution to the Remote Sensing of Snow Cover
title_short Automated Classification of Terrestrial Images: The Contribution to the Remote Sensing of Snow Cover
title_full Automated Classification of Terrestrial Images: The Contribution to the Remote Sensing of Snow Cover
title_fullStr Automated Classification of Terrestrial Images: The Contribution to the Remote Sensing of Snow Cover
title_full_unstemmed Automated Classification of Terrestrial Images: The Contribution to the Remote Sensing of Snow Cover
title_sort automated classification of terrestrial images: the contribution to the remote sensing of snow cover
publisher MDPI AG
series Geosciences
issn 2076-3263
publishDate 2019-02-01
description The relation between the fraction of snow cover and the spectral behavior of the surface is a critical issue that must be approached in order to retrieve the snow cover extent from remotely sensed data. Ground-based cameras are an important source of datasets for the preparation of long time series concerning the snow cover. This study investigates the support provided by terrestrial photography for the estimation of a site-specific threshold to discriminate the snow cover. The case study is located in the Italian Alps (Falcade, Italy). The images taken over a ten-year period were analyzed using an automated snow-not-snow detection algorithm based on Spectral Similarity. The performance of the Spectral Similarity approach was initially investigated comparing the results with different supervised methods on a training dataset, and subsequently through automated procedures on the entire dataset. Finally, the integration with satellite snow products explored the opportunity offered by terrestrial photography for calibrating and validating satellite-based data over a decade.
topic fractional snow cover
remote sensing
terrestrial photography
cold regions
url https://www.mdpi.com/2076-3263/9/2/97
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