A chlorophyll-a algorithm for Landsat-8 based on mixture density networks
Resumen:
Retrieval of aquatic biogeochemical variables, such as the near-surface concentration of chlorophyll-a (Chla) in inland and coastal waters via remote observations, has long been regarded as a challenging task. This manuscript applies Mixture Density Networks (MDN) that use the visible spectral bands available by the Operational Land Imager (OLI) aboard Landsat-8 to estimate Chla. We utilize a database of co-located in situ radiometric and Chla measurements (N = 4,354), referred to as Type A data, to train and test an MDN model (MDNA). This algorithm’s performance, having been proven for other satellite missions, is further evaluated against other widely used machine learning models (e.g., support vector machines), as well as other domain-specific solutions (OC3), and shown to offer significant advancements in the field. Our performance assessment using a held-out test data set suggests that a 49% (median) accuracy with near-zero bias can be achieved via the MDNA model, offering improvements of 20 to 100% in retrievals with respect to other models. The sensitivity of the MDNA model and benchmarking methods to uncertainties from atmospheric correction (AC) methods, is further quantified through a semi-global matchup dataset (N = 3,337), referred to as Type B data. To tackle the increased uncertainties, alternative MDN models (MDNB) are developed through various features of the Type B data (e.g., Rayleigh-corrected reflectance spectra ρs ). Using held-out data, along with spatial and temporal analyses, we demonstrate that these alternative models show promise in enhancing the retrieval accuracy adversely influenced by the AC process. Results lend support for the adoption of MDNB models for regional and potentially global processing of OLI imagery, until a more robust AC method is developed. Index Terms—Chlorophyll-a, coastal water, inland water, Landsat-8, machine learning, ocean color, aquatic remote sensing.
2021 | |
Landsat Machin learning Aquatic remote sensing Coastal Lakes Chlorophyll-a |
|
Inglés | |
Universidad de la República | |
COLIBRI | |
https://hdl.handle.net/20.500.12008/41002 | |
Acceso abierto | |
Licencia Creative Commons Atribución (CC - By 4.0) |
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---|---|
author | Smith, Brandon |
author2 | Pahlevan, Nima Schalles, John Ruberg, Steve Errera, Reagan Ma, Ronghua Giardino, Claudia Bresciani, Mariano Barbosa, Claudio Moore, Tim Fernández Ramos, Virginia Myriam Alikas, Krista Kangro, Kersti |
author2_role | author author author author author author author author author author author author |
author_facet | Smith, Brandon Pahlevan, Nima Schalles, John Ruberg, Steve Errera, Reagan Ma, Ronghua Giardino, Claudia Bresciani, Mariano Barbosa, Claudio Moore, Tim Fernández Ramos, Virginia Myriam Alikas, Krista Kangro, Kersti |
author_role | author |
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collection | COLIBRI |
dc.contributor.filiacion.none.fl_str_mv | Smith Brandon Pahlevan Nima Schalles John Ruberg Steve Errera Reagan Ma Ronghua Giardino Claudia Bresciani Mariano Barbosa Claudio Moore Tim Fernández Ramos Virginia Myriam, Universidad de la República (Uruguay). Facultad de Ciencias. Instituto de Ciencias Geológicas. Alikas Krista Kangro Kersti |
dc.creator.none.fl_str_mv | Smith, Brandon Pahlevan, Nima Schalles, John Ruberg, Steve Errera, Reagan Ma, Ronghua Giardino, Claudia Bresciani, Mariano Barbosa, Claudio Moore, Tim Fernández Ramos, Virginia Myriam Alikas, Krista Kangro, Kersti |
dc.date.accessioned.none.fl_str_mv | 2023-11-08T15:04:13Z |
dc.date.available.none.fl_str_mv | 2023-11-08T15:04:13Z |
dc.date.issued.none.fl_str_mv | 2021 |
dc.description.abstract.none.fl_txt_mv | Retrieval of aquatic biogeochemical variables, such as the near-surface concentration of chlorophyll-a (Chla) in inland and coastal waters via remote observations, has long been regarded as a challenging task. This manuscript applies Mixture Density Networks (MDN) that use the visible spectral bands available by the Operational Land Imager (OLI) aboard Landsat-8 to estimate Chla. We utilize a database of co-located in situ radiometric and Chla measurements (N = 4,354), referred to as Type A data, to train and test an MDN model (MDNA). This algorithm’s performance, having been proven for other satellite missions, is further evaluated against other widely used machine learning models (e.g., support vector machines), as well as other domain-specific solutions (OC3), and shown to offer significant advancements in the field. Our performance assessment using a held-out test data set suggests that a 49% (median) accuracy with near-zero bias can be achieved via the MDNA model, offering improvements of 20 to 100% in retrievals with respect to other models. The sensitivity of the MDNA model and benchmarking methods to uncertainties from atmospheric correction (AC) methods, is further quantified through a semi-global matchup dataset (N = 3,337), referred to as Type B data. To tackle the increased uncertainties, alternative MDN models (MDNB) are developed through various features of the Type B data (e.g., Rayleigh-corrected reflectance spectra ρs ). Using held-out data, along with spatial and temporal analyses, we demonstrate that these alternative models show promise in enhancing the retrieval accuracy adversely influenced by the AC process. Results lend support for the adoption of MDNB models for regional and potentially global processing of OLI imagery, until a more robust AC method is developed. Index Terms—Chlorophyll-a, coastal water, inland water, Landsat-8, machine learning, ocean color, aquatic remote sensing. |
dc.description.es.fl_txt_mv | Material suplementario disponible en: |
dc.format.extent.es.fl_str_mv | 17 h. |
dc.format.mimetype.es.fl_str_mv | application/pdf |
dc.identifier.citation.es.fl_str_mv | Smith, B, Pahlevan, N, Schalles, J [y otros autores]. "A chlorophyll-a algorithm for Landsat-8 based on mixture density networks". Frontiers in Remote Sensing. [en línea] 2020, 1: 623678. 17 h. DOI: 10.3389/frsen.2020.623678. |
dc.identifier.doi.none.fl_str_mv | 10.3389/frsen.2020.623678 |
dc.identifier.issn.none.fl_str_mv | 2673-6187 |
dc.identifier.uri.none.fl_str_mv | https://hdl.handle.net/20.500.12008/41002 |
dc.language.iso.none.fl_str_mv | en eng |
dc.publisher.es.fl_str_mv | Frontiers |
dc.relation.ispartof.es.fl_str_mv | Frontiers in Remote Sensing, 2021, 1: 623678. |
dc.rights.license.none.fl_str_mv | Licencia Creative Commons Atribución (CC - By 4.0) |
dc.rights.none.fl_str_mv | info:eu-repo/semantics/openAccess |
dc.source.none.fl_str_mv | reponame:COLIBRI instname:Universidad de la República instacron:Universidad de la República |
dc.subject.es.fl_str_mv | Landsat Machin learning Aquatic remote sensing Coastal Lakes Chlorophyll-a |
dc.title.none.fl_str_mv | A chlorophyll-a algorithm for Landsat-8 based on mixture density networks |
dc.type.es.fl_str_mv | Artículo |
dc.type.none.fl_str_mv | info:eu-repo/semantics/article |
dc.type.version.none.fl_str_mv | info:eu-repo/semantics/publishedVersion |
description | Material suplementario disponible en: |
eu_rights_str_mv | openAccess |
format | article |
id | COLIBRI_3a0be3aea03b152fe45dc45cfa463bf1 |
identifier_str_mv | Smith, B, Pahlevan, N, Schalles, J [y otros autores]. "A chlorophyll-a algorithm for Landsat-8 based on mixture density networks". Frontiers in Remote Sensing. [en línea] 2020, 1: 623678. 17 h. DOI: 10.3389/frsen.2020.623678. 2673-6187 10.3389/frsen.2020.623678 |
instacron_str | Universidad de la República |
institution | Universidad de la República |
instname_str | Universidad de la República |
language | eng |
language_invalid_str_mv | en |
network_acronym_str | COLIBRI |
network_name_str | COLIBRI |
oai_identifier_str | oai:colibri.udelar.edu.uy:20.500.12008/41002 |
publishDate | 2021 |
reponame_str | COLIBRI |
repository.mail.fl_str_mv | mabel.seroubian@seciu.edu.uy |
repository.name.fl_str_mv | COLIBRI - Universidad de la República |
repository_id_str | 4771 |
rights_invalid_str_mv | Licencia Creative Commons Atribución (CC - By 4.0) |
spelling | Smith BrandonPahlevan NimaSchalles JohnRuberg SteveErrera ReaganMa RonghuaGiardino ClaudiaBresciani MarianoBarbosa ClaudioMoore TimFernández Ramos Virginia Myriam, Universidad de la República (Uruguay). Facultad de Ciencias. Instituto de Ciencias Geológicas.Alikas KristaKangro Kersti2023-11-08T15:04:13Z2023-11-08T15:04:13Z2021Smith, B, Pahlevan, N, Schalles, J [y otros autores]. "A chlorophyll-a algorithm for Landsat-8 based on mixture density networks". Frontiers in Remote Sensing. [en línea] 2020, 1: 623678. 17 h. DOI: 10.3389/frsen.2020.623678.2673-6187https://hdl.handle.net/20.500.12008/4100210.3389/frsen.2020.623678Material suplementario disponible en:Retrieval of aquatic biogeochemical variables, such as the near-surface concentration of chlorophyll-a (Chla) in inland and coastal waters via remote observations, has long been regarded as a challenging task. This manuscript applies Mixture Density Networks (MDN) that use the visible spectral bands available by the Operational Land Imager (OLI) aboard Landsat-8 to estimate Chla. We utilize a database of co-located in situ radiometric and Chla measurements (N = 4,354), referred to as Type A data, to train and test an MDN model (MDNA). This algorithm’s performance, having been proven for other satellite missions, is further evaluated against other widely used machine learning models (e.g., support vector machines), as well as other domain-specific solutions (OC3), and shown to offer significant advancements in the field. Our performance assessment using a held-out test data set suggests that a 49% (median) accuracy with near-zero bias can be achieved via the MDNA model, offering improvements of 20 to 100% in retrievals with respect to other models. The sensitivity of the MDNA model and benchmarking methods to uncertainties from atmospheric correction (AC) methods, is further quantified through a semi-global matchup dataset (N = 3,337), referred to as Type B data. To tackle the increased uncertainties, alternative MDN models (MDNB) are developed through various features of the Type B data (e.g., Rayleigh-corrected reflectance spectra ρs ). Using held-out data, along with spatial and temporal analyses, we demonstrate that these alternative models show promise in enhancing the retrieval accuracy adversely influenced by the AC process. Results lend support for the adoption of MDNB models for regional and potentially global processing of OLI imagery, until a more robust AC method is developed. Index Terms—Chlorophyll-a, coastal water, inland water, Landsat-8, machine learning, ocean color, aquatic remote sensing.Submitted by Parodi Mónica (mparodi@fcien.edu.uy) on 2023-11-07T18:54:33Z No. of bitstreams: 2 license_rdf: 24251 bytes, checksum: 71ed42ef0a0b648670f707320be37b90 (MD5) 103389frsen2020623678.pdf: 4992686 bytes, checksum: 2d3d4269fdfa2204f6d0519db59a1c0f (MD5)Approved for entry into archive by Faget Cecilia (lfaget@fcien.edu.uy) on 2023-11-08T15:02:08Z (GMT) No. of bitstreams: 2 license_rdf: 24251 bytes, checksum: 71ed42ef0a0b648670f707320be37b90 (MD5) 103389frsen2020623678.pdf: 4992686 bytes, checksum: 2d3d4269fdfa2204f6d0519db59a1c0f (MD5)Made available in DSpace by Luna Fabiana (fabiana.luna@seciu.edu.uy) on 2023-11-08T15:04:13Z (GMT). No. of bitstreams: 2 license_rdf: 24251 bytes, checksum: 71ed42ef0a0b648670f707320be37b90 (MD5) 103389frsen2020623678.pdf: 4992686 bytes, checksum: 2d3d4269fdfa2204f6d0519db59a1c0f (MD5) Previous issue date: 202117 h.application/pdfenengFrontiersFrontiers in Remote Sensing, 2021, 1: 623678.Las obras depositadas en el Repositorio se rigen por la Ordenanza de los Derechos de la Propiedad Intelectual de la Universidad de la República.(Res. Nº 91 de C.D.C. de 8/III/1994 – D.O. 7/IV/1994) y por la Ordenanza del Repositorio Abierto de la Universidad de la República (Res. Nº 16 de C.D.C. de 07/10/2014)info:eu-repo/semantics/openAccessLicencia Creative Commons Atribución (CC - By 4.0)LandsatMachin learningAquatic remote sensingCoastalLakesChlorophyll-aA chlorophyll-a algorithm for Landsat-8 based on mixture density networksArtículoinfo:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionreponame:COLIBRIinstname:Universidad de la Repúblicainstacron:Universidad de la RepúblicaSmith, BrandonPahlevan, NimaSchalles, JohnRuberg, SteveErrera, ReaganMa, RonghuaGiardino, ClaudiaBresciani, MarianoBarbosa, ClaudioMoore, TimFernández Ramos, Virginia MyriamAlikas, KristaKangro, KerstiLICENSElicense.txtlicense.txttext/plain; charset=utf-84267http://localhost:8080/xmlui/bitstream/20.500.12008/41002/5/license.txt6429389a7df7277b72b7924fdc7d47a9MD55CC-LICENSElicense_urllicense_urltext/plain; charset=utf-844http://localhost:8080/xmlui/bitstream/20.500.12008/41002/2/license_urla0ebbeafb9d2ec7cbb19d7137ebc392cMD52license_textlicense_texttext/html; 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- Universidad de la Repúblicafalse |
spellingShingle | A chlorophyll-a algorithm for Landsat-8 based on mixture density networks Smith, Brandon Landsat Machin learning Aquatic remote sensing Coastal Lakes Chlorophyll-a |
status_str | publishedVersion |
title | A chlorophyll-a algorithm for Landsat-8 based on mixture density networks |
title_full | A chlorophyll-a algorithm for Landsat-8 based on mixture density networks |
title_fullStr | A chlorophyll-a algorithm for Landsat-8 based on mixture density networks |
title_full_unstemmed | A chlorophyll-a algorithm for Landsat-8 based on mixture density networks |
title_short | A chlorophyll-a algorithm for Landsat-8 based on mixture density networks |
title_sort | A chlorophyll-a algorithm for Landsat-8 based on mixture density networks |
topic | Landsat Machin learning Aquatic remote sensing Coastal Lakes Chlorophyll-a |
url | https://hdl.handle.net/20.500.12008/41002 |