Raw files from flight RU_ANS_TR2_FL004R of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in Siberian larch forests 2018-2019

This data set contains the raw files from flight RU_ALN_TR1_FL007R. The remote sensing imagery is collected using uncrewed aerial vehicles at a series of fire perimeters in larch forests located in northeastern Siberia in 2018 and 2019. Images were collected using visible sensors (blue, green, and r...

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Bibliographic Details
Main Authors: Loranty, Michael, Forbath, Elena, Talucci, Anna, Alexander, Heather, DeMarco, Jennie, Hewitt, Rebecca, Lichstein, Jeremy, Mack, Michelle, Paulson, Alison, McEwan, Ryan
Format: Dataset
Language:English
Published: NSF Arctic Data Center 2021
Subjects:
UAV
Online Access:https://dx.doi.org/10.18739/a2319s392
https://arcticdata.io/catalog/view/doi:10.18739/A2319S392
id ftdatacite:10.18739/a2319s392
record_format openpolar
spelling ftdatacite:10.18739/a2319s392 2023-05-15T15:05:00+02:00 Raw files from flight RU_ANS_TR2_FL004R of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in Siberian larch forests 2018-2019 Loranty, Michael Forbath, Elena Talucci, Anna Alexander, Heather DeMarco, Jennie Hewitt, Rebecca Lichstein, Jeremy Mack, Michelle Paulson, Alison McEwan, Ryan 2021 text/xml https://dx.doi.org/10.18739/a2319s392 https://arcticdata.io/catalog/view/doi:10.18739/A2319S392 en eng NSF Arctic Data Center FORESTS FIRE ECOLOGY VEGETATION COVER VEGETATION INDEX REMOTE SENSING UAV dataset Dataset 2021 ftdatacite https://doi.org/10.18739/a2319s392 2022-02-08T13:06:12Z This data set contains the raw files from flight RU_ALN_TR1_FL007R. The remote sensing imagery is collected using uncrewed aerial vehicles at a series of fire perimeters in larch forests located in northeastern Siberia in 2018 and 2019. Images were collected using visible sensors (blue, green, and red wavelengths) and multispectral sensors (green, red, red-edge, and near-infrared wavelengths). The data were collected perpendicular to fire perimeter boundaries in order to characterize variation vegetation composition and structure between burned and burned forests, and as a function of distance from the unburned forest edge. The resulting images are co-located with field observations of ecosystem properties collected as part of this project that are posted in a related data set (Alexander et al, 2018). Heather Alexander, Jennie DeMarco, Rebecca Hewitt, Jeremy Lichstein, Michael Loranty, et al. 2018. Fire influences on forest recovery and associated climate feedbacks in Siberian Larch Forests, Russia, June-July 2018. Arctic Data Center. urn:uuid:a5de1514-78d3-449f-aad1-2ff8f8d0fb27. Dataset Arctic Siberia DataCite Metadata Store (German National Library of Science and Technology) Arctic Jeremy ENVELOPE(-68.838,-68.838,-69.402,-69.402)
institution Open Polar
collection DataCite Metadata Store (German National Library of Science and Technology)
op_collection_id ftdatacite
language English
topic FORESTS
FIRE ECOLOGY
VEGETATION COVER
VEGETATION INDEX
REMOTE SENSING
UAV
spellingShingle FORESTS
FIRE ECOLOGY
VEGETATION COVER
VEGETATION INDEX
REMOTE SENSING
UAV
Loranty, Michael
Forbath, Elena
Talucci, Anna
Alexander, Heather
DeMarco, Jennie
Hewitt, Rebecca
Lichstein, Jeremy
Mack, Michelle
Paulson, Alison
McEwan, Ryan
Raw files from flight RU_ANS_TR2_FL004R of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in Siberian larch forests 2018-2019
topic_facet FORESTS
FIRE ECOLOGY
VEGETATION COVER
VEGETATION INDEX
REMOTE SENSING
UAV
description This data set contains the raw files from flight RU_ALN_TR1_FL007R. The remote sensing imagery is collected using uncrewed aerial vehicles at a series of fire perimeters in larch forests located in northeastern Siberia in 2018 and 2019. Images were collected using visible sensors (blue, green, and red wavelengths) and multispectral sensors (green, red, red-edge, and near-infrared wavelengths). The data were collected perpendicular to fire perimeter boundaries in order to characterize variation vegetation composition and structure between burned and burned forests, and as a function of distance from the unburned forest edge. The resulting images are co-located with field observations of ecosystem properties collected as part of this project that are posted in a related data set (Alexander et al, 2018). Heather Alexander, Jennie DeMarco, Rebecca Hewitt, Jeremy Lichstein, Michael Loranty, et al. 2018. Fire influences on forest recovery and associated climate feedbacks in Siberian Larch Forests, Russia, June-July 2018. Arctic Data Center. urn:uuid:a5de1514-78d3-449f-aad1-2ff8f8d0fb27.
format Dataset
author Loranty, Michael
Forbath, Elena
Talucci, Anna
Alexander, Heather
DeMarco, Jennie
Hewitt, Rebecca
Lichstein, Jeremy
Mack, Michelle
Paulson, Alison
McEwan, Ryan
author_facet Loranty, Michael
Forbath, Elena
Talucci, Anna
Alexander, Heather
DeMarco, Jennie
Hewitt, Rebecca
Lichstein, Jeremy
Mack, Michelle
Paulson, Alison
McEwan, Ryan
author_sort Loranty, Michael
title Raw files from flight RU_ANS_TR2_FL004R of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in Siberian larch forests 2018-2019
title_short Raw files from flight RU_ANS_TR2_FL004R of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in Siberian larch forests 2018-2019
title_full Raw files from flight RU_ANS_TR2_FL004R of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in Siberian larch forests 2018-2019
title_fullStr Raw files from flight RU_ANS_TR2_FL004R of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in Siberian larch forests 2018-2019
title_full_unstemmed Raw files from flight RU_ANS_TR2_FL004R of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in Siberian larch forests 2018-2019
title_sort raw files from flight ru_ans_tr2_fl004r of the uncrewed aerial vehicle remote sensing imagery of postfire vegetation in siberian larch forests 2018-2019
publisher NSF Arctic Data Center
publishDate 2021
url https://dx.doi.org/10.18739/a2319s392
https://arcticdata.io/catalog/view/doi:10.18739/A2319S392
long_lat ENVELOPE(-68.838,-68.838,-69.402,-69.402)
geographic Arctic
Jeremy
geographic_facet Arctic
Jeremy
genre Arctic
Siberia
genre_facet Arctic
Siberia
op_doi https://doi.org/10.18739/a2319s392
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