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Spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the United States

Geospatial datasets derived from remote sensing data by means of machine learning methods are often based on probabilistic outputs of abstract nature, which are difficult to translate into interpretable measures. For example, the Global Human Settlement Layer GHS-BUILT-S2 product reports the probabi...

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Autores principales: Uhl, Johannes H., Leyk, Stefan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10653213/
https://www.ncbi.nlm.nih.gov/pubmed/37975073
http://dx.doi.org/10.1016/j.jag.2023.103469
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author Uhl, Johannes H.
Leyk, Stefan
author_facet Uhl, Johannes H.
Leyk, Stefan
author_sort Uhl, Johannes H.
collection PubMed
description Geospatial datasets derived from remote sensing data by means of machine learning methods are often based on probabilistic outputs of abstract nature, which are difficult to translate into interpretable measures. For example, the Global Human Settlement Layer GHS-BUILT-S2 product reports the probability of the presence of built-up areas in 2018 in a global 10 m × 10 m grid. However, practitioners typically require interpretable measures such as binary surfaces indicating the presence or absence of built-up areas or estimates of sub-pixel built-up surface fractions. Herein, we assess the relationship between the built-up probability in GHS-BUILT-S2 and reference built-up surface fractions derived from a highly reliable reference database for several regions in the United States. Furthermore, we identify a binarization threshold using an agreement maximization method that creates binary built-up land data from these built-up probabilities. These binary surfaces are input to a spatially explicit, scale-sensitive accuracy assessment which includes the use of a novel, visual-analytical tool which we call focal precision-recall signature plots. Our analysis reveals that a threshold of 0.5 applied to GHS-BUILT-S2 maximizes the agreement with binarized built-up land data derived from the reference built-up area fraction. We find high levels of accuracy (i.e., county-level F-1 scores of almost 0.8 on average) in the derived built-up areas, and consistently high accuracy along the rural–urban gradient in our study area. These results reveal considerable accuracy improvements in human settlement models based on Sentinel-2 data and deep learning, as compared to earlier, Landsat-based versions of the Global Human Settlement Layer.
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spelling pubmed-106532132023-11-15 Spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the United States Uhl, Johannes H. Leyk, Stefan Int J Appl Earth Obs Geoinf Article Geospatial datasets derived from remote sensing data by means of machine learning methods are often based on probabilistic outputs of abstract nature, which are difficult to translate into interpretable measures. For example, the Global Human Settlement Layer GHS-BUILT-S2 product reports the probability of the presence of built-up areas in 2018 in a global 10 m × 10 m grid. However, practitioners typically require interpretable measures such as binary surfaces indicating the presence or absence of built-up areas or estimates of sub-pixel built-up surface fractions. Herein, we assess the relationship between the built-up probability in GHS-BUILT-S2 and reference built-up surface fractions derived from a highly reliable reference database for several regions in the United States. Furthermore, we identify a binarization threshold using an agreement maximization method that creates binary built-up land data from these built-up probabilities. These binary surfaces are input to a spatially explicit, scale-sensitive accuracy assessment which includes the use of a novel, visual-analytical tool which we call focal precision-recall signature plots. Our analysis reveals that a threshold of 0.5 applied to GHS-BUILT-S2 maximizes the agreement with binarized built-up land data derived from the reference built-up area fraction. We find high levels of accuracy (i.e., county-level F-1 scores of almost 0.8 on average) in the derived built-up areas, and consistently high accuracy along the rural–urban gradient in our study area. These results reveal considerable accuracy improvements in human settlement models based on Sentinel-2 data and deep learning, as compared to earlier, Landsat-based versions of the Global Human Settlement Layer. 2023-09 2023-08-28 /pmc/articles/PMC10653213/ /pubmed/37975073 http://dx.doi.org/10.1016/j.jag.2023.103469 Text en https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) ).
spellingShingle Article
Uhl, Johannes H.
Leyk, Stefan
Spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the United States
title Spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the United States
title_full Spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the United States
title_fullStr Spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the United States
title_full_unstemmed Spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the United States
title_short Spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the United States
title_sort spatially explicit accuracy assessment of deep learning-based, fine-resolution built-up land data in the united states
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10653213/
https://www.ncbi.nlm.nih.gov/pubmed/37975073
http://dx.doi.org/10.1016/j.jag.2023.103469
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