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Hyperspectral leaf area index and chlorophyll retrieval over forest and row-structured vineyard canopies

Hyperspectral leaf area index and chlorophyll retrieval over forest and row-structured vineyard canopies
Hyperspectral leaf area index and chlorophyll retrieval over forest and row-structured vineyard canopies

As an unprecedented stream of decametric hyperspectral observations becomes available from recent and upcoming spaceborne missions, effective algorithms are required to retrieve vegetation biophysical and biochemical variables such as leaf area index (LAI) and canopy chlorophyll content (CCC). In the context of missions such as the Environmental Mapping and Analysis Program (EnMAP), Precursore Iperspettrale della Missione Applicativa (PRISMA), Copernicus Hyperspectral Imaging Mission for the Environment (CHIME), and Surface Biology Geology (SBG), several retrieval algorithms have been developed based upon the turbid medium Scattering by Arbitrarily Inclined Leaves (SAIL) radiative transfer model. Whilst well suited to cereal crops, SAIL is known to perform comparatively poorly over more heterogeneous canopies (including forests and row-structured crops). In this paper, we investigate the application of hybrid radiative transfer models, including a modified version of SAIL (rowSAIL) and the Invertible Forest Reflectance Model (INFORM), to such canopies. Unlike SAIL, which assumes a horizontally homogeneous canopy, such models partition the canopy into geometric objects, which are themselves treated as turbid media. By enabling crown transmittance, foliage clumping, and shadowing to be represented, they provide a more realistic representation of heterogeneous vegetation. Using airborne hyperspectral data to simulate EnMAP observations over vineyard and deciduous broadleaf forest sites, we demonstrate that SAIL-based algorithms provide moderate retrieval accuracy for LAI (RMSD = 0.92–2.15, NRMSD = 40–67%, bias = −0.64–0.96) and CCC (RMSD = 0.27–1.27 g m−2, NRMSD = 64–84%, bias = −0.17–0.89 g m−2). The use of hybrid radiative transfer models (rowSAIL and INFORM) reduces bias in LAI (RMSD = 0.88–1.64, NRMSD = 27–64%, bias = −0.78–−0.13) and CCC (RMSD = 0.30–0.87 g m−2, NRMSD = 52–73%, bias = 0.03–0.42 g m−2) retrievals. Based on our results, at the canopy level, we recommend that hybrid radiative transfer models such as rowSAIL and INFORM are further adopted for hyperspectral biophysical and biochemical variable retrieval over heterogeneous vegetation.

CCC, CHIME, EnMAP, INFORM, LAI, PRISMA, SAIL, SBG
2072-4292
Brown, Luke A.
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Morris, Harry
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MacLachlan, Andrew
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D’Adamo, Francesco
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Adams, Jennifer
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Lopez-Baeza, Ernesto
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Albero, Erika
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Martínez, Beatriz
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Sánchez-Ruiz, Sergio
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Campos-Taberner, Manuel
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Lidón, Antonio
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Lull, Cristina
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Bautista, Inmaculada
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Clewley, Daniel
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Llewellyn, Gary
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Xie, Qiaoyun
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Camacho, Fernando
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Pastor-Guzman, Julio
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Morrone, Rosalinda
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Sinclair, Morven
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Williams, Owen
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Hunt, Merryn
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Hueni, Andreas
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Boccia, Valentina
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Dransfeld, Steffen
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Dash, Jadunandan
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et al.
Brown, Luke A.
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Morris, Harry
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MacLachlan, Andrew
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D’Adamo, Francesco
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Adams, Jennifer
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Lopez-Baeza, Ernesto
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Albero, Erika
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Martínez, Beatriz
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Sánchez-Ruiz, Sergio
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Campos-Taberner, Manuel
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Lidón, Antonio
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Lull, Cristina
4b92b384-e345-4cbf-9193-0887bee250c7
Bautista, Inmaculada
7837a39e-f049-48bd-b54e-5a9848fefa66
Clewley, Daniel
aaedd98c-003a-4952-aa97-a011592d5aaa
Llewellyn, Gary
fa013158-eae6-4e71-befa-5fbd4d66a813
Xie, Qiaoyun
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Camacho, Fernando
76d2e230-c016-4bb1-9e2c-88b4e5885c25
Pastor-Guzman, Julio
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Morrone, Rosalinda
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Sinclair, Morven
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Williams, Owen
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Hunt, Merryn
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Hueni, Andreas
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Boccia, Valentina
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Dransfeld, Steffen
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Dash, Jadunandan
51468afb-3d56-4d3a-aace-736b63e9fac8

Brown, Luke A., Morris, Harry and MacLachlan, Andrew , et al. (2024) Hyperspectral leaf area index and chlorophyll retrieval over forest and row-structured vineyard canopies. Remote Sensing, 16 (12), [2066]. (doi:10.3390/rs16122066).

Record type: Article

Abstract

As an unprecedented stream of decametric hyperspectral observations becomes available from recent and upcoming spaceborne missions, effective algorithms are required to retrieve vegetation biophysical and biochemical variables such as leaf area index (LAI) and canopy chlorophyll content (CCC). In the context of missions such as the Environmental Mapping and Analysis Program (EnMAP), Precursore Iperspettrale della Missione Applicativa (PRISMA), Copernicus Hyperspectral Imaging Mission for the Environment (CHIME), and Surface Biology Geology (SBG), several retrieval algorithms have been developed based upon the turbid medium Scattering by Arbitrarily Inclined Leaves (SAIL) radiative transfer model. Whilst well suited to cereal crops, SAIL is known to perform comparatively poorly over more heterogeneous canopies (including forests and row-structured crops). In this paper, we investigate the application of hybrid radiative transfer models, including a modified version of SAIL (rowSAIL) and the Invertible Forest Reflectance Model (INFORM), to such canopies. Unlike SAIL, which assumes a horizontally homogeneous canopy, such models partition the canopy into geometric objects, which are themselves treated as turbid media. By enabling crown transmittance, foliage clumping, and shadowing to be represented, they provide a more realistic representation of heterogeneous vegetation. Using airborne hyperspectral data to simulate EnMAP observations over vineyard and deciduous broadleaf forest sites, we demonstrate that SAIL-based algorithms provide moderate retrieval accuracy for LAI (RMSD = 0.92–2.15, NRMSD = 40–67%, bias = −0.64–0.96) and CCC (RMSD = 0.27–1.27 g m−2, NRMSD = 64–84%, bias = −0.17–0.89 g m−2). The use of hybrid radiative transfer models (rowSAIL and INFORM) reduces bias in LAI (RMSD = 0.88–1.64, NRMSD = 27–64%, bias = −0.78–−0.13) and CCC (RMSD = 0.30–0.87 g m−2, NRMSD = 52–73%, bias = 0.03–0.42 g m−2) retrievals. Based on our results, at the canopy level, we recommend that hybrid radiative transfer models such as rowSAIL and INFORM are further adopted for hyperspectral biophysical and biochemical variable retrieval over heterogeneous vegetation.

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Accepted/In Press date: 4 June 2024
Published date: 7 June 2024
Keywords: CCC, CHIME, EnMAP, INFORM, LAI, PRISMA, SAIL, SBG

Identifiers

Local EPrints ID: 503209
URI: http://eprints.soton.ac.uk/id/eprint/503209
ISSN: 2072-4292
PURE UUID: 62bcc58e-638e-4ddf-bda2-7453deb343f3
ORCID for Luke A. Brown: ORCID iD orcid.org/0000-0003-4807-9056
ORCID for Jadunandan Dash: ORCID iD orcid.org/0000-0002-5444-2109

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Date deposited: 24 Jul 2025 16:34
Last modified: 19 Sep 2025 01:40

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Contributors

Author: Luke A. Brown ORCID iD
Author: Harry Morris
Author: Andrew MacLachlan
Author: Francesco D’Adamo
Author: Jennifer Adams
Author: Ernesto Lopez-Baeza
Author: Erika Albero
Author: Beatriz Martínez
Author: Sergio Sánchez-Ruiz
Author: Manuel Campos-Taberner
Author: Antonio Lidón
Author: Cristina Lull
Author: Inmaculada Bautista
Author: Daniel Clewley
Author: Gary Llewellyn
Author: Qiaoyun Xie
Author: Fernando Camacho
Author: Julio Pastor-Guzman
Author: Rosalinda Morrone
Author: Morven Sinclair
Author: Owen Williams
Author: Merryn Hunt
Author: Andreas Hueni
Author: Valentina Boccia
Author: Steffen Dransfeld
Author: Jadunandan Dash ORCID iD
Corporate Author: et al.

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