Determining Subarctic Peatland Vegetation Using an Unmanned Aerial System (UAS)

Rising global temperatures tied to increases in greenhouse gas emissions are impacting high latitude regions, leading to changes in vegetation composition and feedbacks to climate through increased methane (CH4) emissions. In subarctic peatlands, permafrost collapse has led to shifts in vegetation s...

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Main Authors: Michael Palace, Christina Herrick, Jessica DelGreco, Daniel Finnell, Anthony John Garnello, Carmody McCalley, Kellen McArthur, Franklin Sullivan, Ruth K. Varner
Format: Article
Language:English
Published: MDPI AG 2018-09-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/10/9/1498
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spelling doaj-b65ea34d80974c47b5e6a686a4066d032020-11-24T22:22:55ZengMDPI AGRemote Sensing2072-42922018-09-01109149810.3390/rs10091498rs10091498Determining Subarctic Peatland Vegetation Using an Unmanned Aerial System (UAS)Michael Palace0Christina Herrick1Jessica DelGreco2Daniel Finnell3Anthony John Garnello4Carmody McCalley5Kellen McArthur6Franklin Sullivan7Ruth K. Varner8Earth System Research Center, University of New Hampshire, 8 College Rd, Durham NH 03824, UKEarth System Research Center, University of New Hampshire, 8 College Rd, Durham NH 03824, UKEarth System Research Center, University of New Hampshire, 8 College Rd, Durham NH 03824, UKVirginia Commonwealth University Center for Environmental Studies, 1000 West Cary St, Richmond, VA 23284, USADepartment of Ecology & Evolutionary Biology. University of Arizona, P.O. Box 210088, Tuscon, AZ 85721, USASchool of Life Sciences, Rochester Institute of Technology, 85 Lomb Memorial Drive, Rochester, NY 14623, USAEarth System Research Center, University of New Hampshire, 8 College Rd, Durham NH 03824, UKEarth System Research Center, University of New Hampshire, 8 College Rd, Durham NH 03824, UKEarth System Research Center, University of New Hampshire, 8 College Rd, Durham NH 03824, UKRising global temperatures tied to increases in greenhouse gas emissions are impacting high latitude regions, leading to changes in vegetation composition and feedbacks to climate through increased methane (CH4) emissions. In subarctic peatlands, permafrost collapse has led to shifts in vegetation species on landscape scales with high spatial heterogeneity. Our goal was to provide a baseline for vegetation distribution related to permafrost collapse and changes in biogeochemical processes. We collected unmanned aerial system (UAS) imagery at Stordalen Mire, Abisko, Sweden to classify vegetation cover types. A series of digital image processing routines were used to generate texture attributes within the image for the purpose of characterizing vegetative cover types. An artificial neural network (ANN) was developed to classify the image. The ANN used all texture variables and color bands (three spectral bands and six metrics) to generate a probability map for each of the eight cover classes. We used the highest probability for a class at each pixel to designate the cover type in the final map. Our overall misclassification rate was 32%, while omission and commission error by class ranged from 0% to 50%. We found that within our area of interest, cover classes most indicative of underlying permafrost (hummock and tall shrub) comprised 43.9% percent of the landscape. Our effort showed the capability of an ANN applied to UAS high-resolution imagery to develop a classification that focuses on vegetation types associated with permafrost status and therefore potentially changes in greenhouse gas exchange. We also used a method to examine the multiple probabilities representing cover class prediction at the pixel level to examine model confusion. UAS image collection can be inexpensive and a repeatable avenue to determine vegetation change at high latitudes, which can further be used to estimate and scale corresponding changes in CH4 emissions.http://www.mdpi.com/2072-4292/10/9/1498unmanned aerial system (UAS)artificial neural networkmire vegetationStordalentundradroneclassification
collection DOAJ
language English
format Article
sources DOAJ
author Michael Palace
Christina Herrick
Jessica DelGreco
Daniel Finnell
Anthony John Garnello
Carmody McCalley
Kellen McArthur
Franklin Sullivan
Ruth K. Varner
spellingShingle Michael Palace
Christina Herrick
Jessica DelGreco
Daniel Finnell
Anthony John Garnello
Carmody McCalley
Kellen McArthur
Franklin Sullivan
Ruth K. Varner
Determining Subarctic Peatland Vegetation Using an Unmanned Aerial System (UAS)
Remote Sensing
unmanned aerial system (UAS)
artificial neural network
mire vegetation
Stordalen
tundra
drone
classification
author_facet Michael Palace
Christina Herrick
Jessica DelGreco
Daniel Finnell
Anthony John Garnello
Carmody McCalley
Kellen McArthur
Franklin Sullivan
Ruth K. Varner
author_sort Michael Palace
title Determining Subarctic Peatland Vegetation Using an Unmanned Aerial System (UAS)
title_short Determining Subarctic Peatland Vegetation Using an Unmanned Aerial System (UAS)
title_full Determining Subarctic Peatland Vegetation Using an Unmanned Aerial System (UAS)
title_fullStr Determining Subarctic Peatland Vegetation Using an Unmanned Aerial System (UAS)
title_full_unstemmed Determining Subarctic Peatland Vegetation Using an Unmanned Aerial System (UAS)
title_sort determining subarctic peatland vegetation using an unmanned aerial system (uas)
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2018-09-01
description Rising global temperatures tied to increases in greenhouse gas emissions are impacting high latitude regions, leading to changes in vegetation composition and feedbacks to climate through increased methane (CH4) emissions. In subarctic peatlands, permafrost collapse has led to shifts in vegetation species on landscape scales with high spatial heterogeneity. Our goal was to provide a baseline for vegetation distribution related to permafrost collapse and changes in biogeochemical processes. We collected unmanned aerial system (UAS) imagery at Stordalen Mire, Abisko, Sweden to classify vegetation cover types. A series of digital image processing routines were used to generate texture attributes within the image for the purpose of characterizing vegetative cover types. An artificial neural network (ANN) was developed to classify the image. The ANN used all texture variables and color bands (three spectral bands and six metrics) to generate a probability map for each of the eight cover classes. We used the highest probability for a class at each pixel to designate the cover type in the final map. Our overall misclassification rate was 32%, while omission and commission error by class ranged from 0% to 50%. We found that within our area of interest, cover classes most indicative of underlying permafrost (hummock and tall shrub) comprised 43.9% percent of the landscape. Our effort showed the capability of an ANN applied to UAS high-resolution imagery to develop a classification that focuses on vegetation types associated with permafrost status and therefore potentially changes in greenhouse gas exchange. We also used a method to examine the multiple probabilities representing cover class prediction at the pixel level to examine model confusion. UAS image collection can be inexpensive and a repeatable avenue to determine vegetation change at high latitudes, which can further be used to estimate and scale corresponding changes in CH4 emissions.
topic unmanned aerial system (UAS)
artificial neural network
mire vegetation
Stordalen
tundra
drone
classification
url http://www.mdpi.com/2072-4292/10/9/1498
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