Biomass estimates derived from sector subsampling of 360° spherical images

Abstract Efficient subsampling designs reduce forest inventory costs by focusing sampling efforts on more variable forest attributes. Sector subsampling is an efficient and accurate alternative to big basal area factor (big BAF) sampling to estimate the mean basal area to biomass ratio. In this stud...

Full description

Bibliographic Details
Published in:Forestry: An International Journal of Forest Research
Main Authors: Dai, Xiao, Ducey, Mark J, Wang, Haozhou, Yang, Ting-Ru, Hsu, Yung-Han, Ogilvie, Jae, Kershaw, John A
Other Authors: New Brunswick Innovation Foundation, Natural Sciences and Engineering Research Council of Canada, Department of Natural Resources, Government of Newfoundland and Labrador
Format: Article in Journal/Newspaper
Language:English
Published: Oxford University Press (OUP) 2021
Subjects:
Online Access:http://dx.doi.org/10.1093/forestry/cpab023
http://academic.oup.com/forestry/article-pdf/94/4/565/39611197/cpab023.pdf
id croxfordunivpr:10.1093/forestry/cpab023
record_format openpolar
spelling croxfordunivpr:10.1093/forestry/cpab023 2024-02-11T10:05:57+01:00 Biomass estimates derived from sector subsampling of 360° spherical images Dai, Xiao Ducey, Mark J Wang, Haozhou Yang, Ting-Ru Hsu, Yung-Han Ogilvie, Jae Kershaw, John A New Brunswick Innovation Foundation Natural Sciences and Engineering Research Council of Canada Department of Natural Resources, Government of Newfoundland and Labrador 2021 http://dx.doi.org/10.1093/forestry/cpab023 http://academic.oup.com/forestry/article-pdf/94/4/565/39611197/cpab023.pdf en eng Oxford University Press (OUP) https://academic.oup.com/journals/pages/open_access/funder_policies/chorus/standard_publication_model Forestry: An International Journal of Forest Research volume 94, issue 4, page 565-575 ISSN 0015-752X 1464-3626 Forestry journal-article 2021 croxfordunivpr https://doi.org/10.1093/forestry/cpab023 2024-01-12T09:26:49Z Abstract Efficient subsampling designs reduce forest inventory costs by focusing sampling efforts on more variable forest attributes. Sector subsampling is an efficient and accurate alternative to big basal area factor (big BAF) sampling to estimate the mean basal area to biomass ratio. In this study, we apply sector subsampling of spherical images to estimate aboveground biomass and compare our image-based estimates with field data collected from three early spacing trials on western Newfoundland Island in eastern Canada. The results show that sector subsampling of spherical images produced increased sampling errors of 0.3–3.4 per cent with only about 60 trees measured across 30 spherical images compared with about 4000 trees measured in the field. Photo-derived basal area was underestimated because of occluded trees; however, we implemented an additional level of subsampling, collecting field-based basal area counts, to correct for bias due to occluded trees. We applied Bruce’s formula for standard error estimation to our three-level hierarchical subsampling scheme and showed that Bruce’s formula is generalizable to any dimension of hierarchical subsampling. Spherical images are easily and quickly captured in the field using a consumer-grade 360° camera and sector subsampling, including all individual tree measurements, were obtained using a custom-developed python software package. The system is an efficient and accurate photo-based alternative to field-based big BAF subsampling. Article in Journal/Newspaper Newfoundland Oxford University Press Canada Forestry: An International Journal of Forest Research
institution Open Polar
collection Oxford University Press
op_collection_id croxfordunivpr
language English
topic Forestry
spellingShingle Forestry
Dai, Xiao
Ducey, Mark J
Wang, Haozhou
Yang, Ting-Ru
Hsu, Yung-Han
Ogilvie, Jae
Kershaw, John A
Biomass estimates derived from sector subsampling of 360° spherical images
topic_facet Forestry
description Abstract Efficient subsampling designs reduce forest inventory costs by focusing sampling efforts on more variable forest attributes. Sector subsampling is an efficient and accurate alternative to big basal area factor (big BAF) sampling to estimate the mean basal area to biomass ratio. In this study, we apply sector subsampling of spherical images to estimate aboveground biomass and compare our image-based estimates with field data collected from three early spacing trials on western Newfoundland Island in eastern Canada. The results show that sector subsampling of spherical images produced increased sampling errors of 0.3–3.4 per cent with only about 60 trees measured across 30 spherical images compared with about 4000 trees measured in the field. Photo-derived basal area was underestimated because of occluded trees; however, we implemented an additional level of subsampling, collecting field-based basal area counts, to correct for bias due to occluded trees. We applied Bruce’s formula for standard error estimation to our three-level hierarchical subsampling scheme and showed that Bruce’s formula is generalizable to any dimension of hierarchical subsampling. Spherical images are easily and quickly captured in the field using a consumer-grade 360° camera and sector subsampling, including all individual tree measurements, were obtained using a custom-developed python software package. The system is an efficient and accurate photo-based alternative to field-based big BAF subsampling.
author2 New Brunswick Innovation Foundation
Natural Sciences and Engineering Research Council of Canada
Department of Natural Resources, Government of Newfoundland and Labrador
format Article in Journal/Newspaper
author Dai, Xiao
Ducey, Mark J
Wang, Haozhou
Yang, Ting-Ru
Hsu, Yung-Han
Ogilvie, Jae
Kershaw, John A
author_facet Dai, Xiao
Ducey, Mark J
Wang, Haozhou
Yang, Ting-Ru
Hsu, Yung-Han
Ogilvie, Jae
Kershaw, John A
author_sort Dai, Xiao
title Biomass estimates derived from sector subsampling of 360° spherical images
title_short Biomass estimates derived from sector subsampling of 360° spherical images
title_full Biomass estimates derived from sector subsampling of 360° spherical images
title_fullStr Biomass estimates derived from sector subsampling of 360° spherical images
title_full_unstemmed Biomass estimates derived from sector subsampling of 360° spherical images
title_sort biomass estimates derived from sector subsampling of 360° spherical images
publisher Oxford University Press (OUP)
publishDate 2021
url http://dx.doi.org/10.1093/forestry/cpab023
http://academic.oup.com/forestry/article-pdf/94/4/565/39611197/cpab023.pdf
geographic Canada
geographic_facet Canada
genre Newfoundland
genre_facet Newfoundland
op_source Forestry: An International Journal of Forest Research
volume 94, issue 4, page 565-575
ISSN 0015-752X 1464-3626
op_rights https://academic.oup.com/journals/pages/open_access/funder_policies/chorus/standard_publication_model
op_doi https://doi.org/10.1093/forestry/cpab023
container_title Forestry: An International Journal of Forest Research
_version_ 1790603315694796800