Mapping Siberian Arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of Adycha river valley
The landscape taxonomy has a complex structure and hierarchical classification with indicators of their recognition, which is based on a variety of heterogeneous geographic territorial and expert knowledge. This inevitably leads to difficulties in the interpretation of remote sensing data and image...
Published in: | Proceedings of the 7th International Conference on Geographical Information Systems Theory, Applications and Management |
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ftlithuaniansrc:oai:elaba:95107052 2023-05-15T15:09:53+02:00 Mapping Siberian Arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of Adycha river valley Zakharov, Moisei Gadal, Sébastien Danilov, Yuri Kamičaitytė, Jūratė 2021 application/pdf http://ktu.oai.elaba.lt/documents/95107052.pdf http://ktu.lvb.lt/KTU:ELABAPDB95107052&prefLang=en_US eng eng info:eu-repo/semantics/altIdentifier/doi/10.5220/0010448801250133 http://ktu.oai.elaba.lt/documents/95107052.pdf http://ktu.lvb.lt/KTU:ELABAPDB95107052&prefLang=en_US info:eu-repo/semantics/openAccess GISTAM 2021: proceedings of the 7th international conference on geographical information systems theory, applications and management, April 23-25, 2021 / edited by C. Grueau, R. Laurini, L. Ragia, Setúbal : Scitepress - Science and technology publications, 2021, vol. 1, p. 125-133 ISSN 2184-500X ISBN 9789897585036 permafrost landscape remote sensing modeling landscape mapping terrain landsat ASTER GDEM Yakutia info:eu-repo/semantics/article 2021 ftlithuaniansrc https://doi.org/10.5220/0010448801250133 2021-12-02T01:16:47Z The landscape taxonomy has a complex structure and hierarchical classification with indicators of their recognition, which is based on a variety of heterogeneous geographic territorial and expert knowledge. This inevitably leads to difficulties in the interpretation of remote sensing data and image analysis in landscape research in the field of classification and mapping. This article examines an approach to the analysis of intraseason Landsat 8 OLI images and modeling of ASTER GDEM data for mapping of mountain permafrost landscapes of Northern Siberia at the scale of 1: 500,000 as well as its methods of classification and geographical recognition. This approach suggests implementing the recognition of terrain types and vegetation types of landscape types. The 8 types of the landscape have been identified by using the classification of the relief applying Jenness's algorithm and the assessment of the geomorphological parameters of the valley. The 6 vegetation types have been identified in mountain tundra, mountain woodlands, and valley complexes of the Adycha river valley in the Verkhoyansk mountain range. The results of mapping and the proposed method for the interpretation of remote sensing data used at regional and local levels of studying the characteristics of the permafrost distribution. The work contributes to the understanding of the landscape organization of remote mountainous permafrost areas and to the improvement of methods for mapping the permafrost landscapes for territorial development and rational environmental management. Article in Journal/Newspaper Arctic permafrost Tundra Yakutia Siberia LSRC VL (Lithuanian Social Research Centre Virtual Library) Arctic Verkhoyansk ENVELOPE(133.400,133.400,67.544,67.544) Adycha ENVELOPE(134.773,134.773,68.217,68.217) Proceedings of the 7th International Conference on Geographical Information Systems Theory, Applications and Management 125 133 |
institution |
Open Polar |
collection |
LSRC VL (Lithuanian Social Research Centre Virtual Library) |
op_collection_id |
ftlithuaniansrc |
language |
English |
topic |
permafrost landscape remote sensing modeling landscape mapping terrain landsat ASTER GDEM Yakutia |
spellingShingle |
permafrost landscape remote sensing modeling landscape mapping terrain landsat ASTER GDEM Yakutia Zakharov, Moisei Gadal, Sébastien Danilov, Yuri Kamičaitytė, Jūratė Mapping Siberian Arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of Adycha river valley |
topic_facet |
permafrost landscape remote sensing modeling landscape mapping terrain landsat ASTER GDEM Yakutia |
description |
The landscape taxonomy has a complex structure and hierarchical classification with indicators of their recognition, which is based on a variety of heterogeneous geographic territorial and expert knowledge. This inevitably leads to difficulties in the interpretation of remote sensing data and image analysis in landscape research in the field of classification and mapping. This article examines an approach to the analysis of intraseason Landsat 8 OLI images and modeling of ASTER GDEM data for mapping of mountain permafrost landscapes of Northern Siberia at the scale of 1: 500,000 as well as its methods of classification and geographical recognition. This approach suggests implementing the recognition of terrain types and vegetation types of landscape types. The 8 types of the landscape have been identified by using the classification of the relief applying Jenness's algorithm and the assessment of the geomorphological parameters of the valley. The 6 vegetation types have been identified in mountain tundra, mountain woodlands, and valley complexes of the Adycha river valley in the Verkhoyansk mountain range. The results of mapping and the proposed method for the interpretation of remote sensing data used at regional and local levels of studying the characteristics of the permafrost distribution. The work contributes to the understanding of the landscape organization of remote mountainous permafrost areas and to the improvement of methods for mapping the permafrost landscapes for territorial development and rational environmental management. |
format |
Article in Journal/Newspaper |
author |
Zakharov, Moisei Gadal, Sébastien Danilov, Yuri Kamičaitytė, Jūratė |
author_facet |
Zakharov, Moisei Gadal, Sébastien Danilov, Yuri Kamičaitytė, Jūratė |
author_sort |
Zakharov, Moisei |
title |
Mapping Siberian Arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of Adycha river valley |
title_short |
Mapping Siberian Arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of Adycha river valley |
title_full |
Mapping Siberian Arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of Adycha river valley |
title_fullStr |
Mapping Siberian Arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of Adycha river valley |
title_full_unstemmed |
Mapping Siberian Arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of Adycha river valley |
title_sort |
mapping siberian arctic mountain permafrost landscapes by machine learning multi-sensors remote sensing: example of adycha river valley |
publishDate |
2021 |
url |
http://ktu.oai.elaba.lt/documents/95107052.pdf http://ktu.lvb.lt/KTU:ELABAPDB95107052&prefLang=en_US |
long_lat |
ENVELOPE(133.400,133.400,67.544,67.544) ENVELOPE(134.773,134.773,68.217,68.217) |
geographic |
Arctic Verkhoyansk Adycha |
geographic_facet |
Arctic Verkhoyansk Adycha |
genre |
Arctic permafrost Tundra Yakutia Siberia |
genre_facet |
Arctic permafrost Tundra Yakutia Siberia |
op_source |
GISTAM 2021: proceedings of the 7th international conference on geographical information systems theory, applications and management, April 23-25, 2021 / edited by C. Grueau, R. Laurini, L. Ragia, Setúbal : Scitepress - Science and technology publications, 2021, vol. 1, p. 125-133 ISSN 2184-500X ISBN 9789897585036 |
op_relation |
info:eu-repo/semantics/altIdentifier/doi/10.5220/0010448801250133 http://ktu.oai.elaba.lt/documents/95107052.pdf http://ktu.lvb.lt/KTU:ELABAPDB95107052&prefLang=en_US |
op_rights |
info:eu-repo/semantics/openAccess |
op_doi |
https://doi.org/10.5220/0010448801250133 |
container_title |
Proceedings of the 7th International Conference on Geographical Information Systems Theory, Applications and Management |
container_start_page |
125 |
op_container_end_page |
133 |
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1766340978253234176 |