2021
DOI: 10.1101/2021.08.06.453503
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Data science competition for cross-site delineation and classification of individual trees from airborne remote sensing data

Abstract: Delineating and classifying individual trees in remote sensing data is challenging. Many tree crown delineation methods have difficulty in closed-canopy forests and do not leverage multiple datasets. Methods to classify individual species are often accurate for common species, but perform poorly for less common species and when applied to new sites. We ran a data science competition to help identify effective methods for delineation of individual crowns and classification to determine species identity. This co… Show more

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Cited by 4 publications
(5 citation statements)
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References 30 publications
(41 reference statements)
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“…Scholl et al (2020) followed with a four species model at the Niwot Ridge NEON site in Colorado (NIWO). Two data science competitions, one focused on the OSBS site (Marconi et al, 2019) and the second combining data from the OSBS, Talladega, Alabama (TALL) and Mountain Lake, Virginia (MLBS) sites in the Southeastern United States (Graves et al, 2021), used NEON forest plot data with 33 species, of which only 15 had more than five individuals. The lack of data for less common species was the primary factor in poor model performance.…”
Section: Introductionmentioning
confidence: 99%
See 2 more Smart Citations
“…Scholl et al (2020) followed with a four species model at the Niwot Ridge NEON site in Colorado (NIWO). Two data science competitions, one focused on the OSBS site (Marconi et al, 2019) and the second combining data from the OSBS, Talladega, Alabama (TALL) and Mountain Lake, Virginia (MLBS) sites in the Southeastern United States (Graves et al, 2021), used NEON forest plot data with 33 species, of which only 15 had more than five individuals. The lack of data for less common species was the primary factor in poor model performance.…”
Section: Introductionmentioning
confidence: 99%
“…The lack of data for less common species was the primary factor in poor model performance. For example, as part of the multisite data competition (Graves et al, 2021), Scholl et al (2021) modeled 27 selected species classes, but only seven of these classes had non-zero evaluation accuracy. Marconi et al (2022) attempted the first NEON-wide model for 77 species across 27 sites using a pixel-based ensemble machine learning classifier.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Scholl et al (2020) followed with a four species model at the Niwot Ridge NEON site in Colorado (NIWO). Two data science competitions, one focused on the OSBS site (Marconi et al 2019) and the second combining data from the OSBS, Talladega, Alabama (TALL), and Mountain Lake, Virginia (MLBS) sites in the Southeastern US (Graves et al 2021), used NEON forest plot data with 33 species, of which only 15 had more than 5 individuals. The lack of data for less common species was the primary factor in poor model performance.…”
Section: Introductionmentioning
confidence: 99%
“…The lack of data for less common species was the primary factor in poor model performance. For example, as part of the multi-site data competition (Graves et al 2021), Scholl et al (2021) modeled 27 selected species classes, but only 7 of these classes had non-zero evaluation accuracy. Marconi et al (2021) attempted the first NEON-wide model for 77 species across 27 sites using a pixel-based ensemble machine learning classifier.…”
Section: Introductionmentioning
confidence: 99%