Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series

Nowadays, Satellite Image Time Series (SITS) are employed as input to derive land cover maps (LCM) to support decision makers in several application domains like agriculture and biodiversity. The generation of LCM largely relies on available ground truth (GT) data to calibrate supervised ma-chine learning models. Unfortunately, this data are not always accessible. In this scenario, the possibility to transfer a model learnt on a particular year (source domain) to another period of time (target domain) could be a valuable tool to deal with the previously mentioned restrictions. In this paper, we provide an experimental evaluation of recent Unsupervised Domain Adaptation (UDA) methods in the specific context of temporal transfer learning for SITS-based LCM. The objective is to learn a classification model at a certain year (exploiting available GT data) and, successively, transfer such a model on a subsequent year where no labelled samples are accessible. The obtained findings reveal that UDA methods represent a promising research direction to cope with the problem of temporal transfer learning for LCM. While a model learnt on the source data and directly applied on target data achieves an weighted F1-score of 67.1, the best UDA method obtains an F1-score of 83.7 with more than 15 points of positive gap. Nevertheless, there is still room for improvement that should be explored in future works.

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Main Authors: Capliez, Emmanuel, Ienco, Dino, Gaetano, Raffaele, Baghdadi, Nicolas, Hadj Salah, Adrien
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Published: IEEE
Online Access:http://agritrop.cirad.fr/607079/
http://agritrop.cirad.fr/607079/1/607079.pdf
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spelling dig-cirad-fr-6070792023-12-01T09:45:46Z http://agritrop.cirad.fr/607079/ http://agritrop.cirad.fr/607079/ Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series. Capliez Emmanuel, Ienco Dino, Gaetano Raffaele, Baghdadi Nicolas, Hadj Salah Adrien. 2022. In : 2022 IEEE International Geoscience and Remote Sensing Symposium. IEEE, GRSS. Kuala Lumpur : IEEE, 275-278. IGARSS 2022, Kuala Lumpur, Malaisie, 17 Juillet 2022/22 Juillet 2022.https://doi.org/10.1109/IGARSS46834.2022.9884094 <https://doi.org/10.1109/IGARSS46834.2022.9884094> Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series Capliez, Emmanuel Ienco, Dino Gaetano, Raffaele Baghdadi, Nicolas Hadj Salah, Adrien eng 2022 IEEE 2022 IEEE International Geoscience and Remote Sensing Symposium Nowadays, Satellite Image Time Series (SITS) are employed as input to derive land cover maps (LCM) to support decision makers in several application domains like agriculture and biodiversity. The generation of LCM largely relies on available ground truth (GT) data to calibrate supervised ma-chine learning models. Unfortunately, this data are not always accessible. In this scenario, the possibility to transfer a model learnt on a particular year (source domain) to another period of time (target domain) could be a valuable tool to deal with the previously mentioned restrictions. In this paper, we provide an experimental evaluation of recent Unsupervised Domain Adaptation (UDA) methods in the specific context of temporal transfer learning for SITS-based LCM. The objective is to learn a classification model at a certain year (exploiting available GT data) and, successively, transfer such a model on a subsequent year where no labelled samples are accessible. The obtained findings reveal that UDA methods represent a promising research direction to cope with the problem of temporal transfer learning for LCM. While a model learnt on the source data and directly applied on target data achieves an weighted F1-score of 67.1, the best UDA method obtains an F1-score of 83.7 with more than 15 points of positive gap. Nevertheless, there is still room for improvement that should be explored in future works. conference_item info:eu-repo/semantics/conferenceObject Conference info:eu-repo/semantics/publishedVersion http://agritrop.cirad.fr/607079/1/607079.pdf text Cirad license info:eu-repo/semantics/restrictedAccess https://agritrop.cirad.fr/mention_legale.html https://doi.org/10.1109/IGARSS46834.2022.9884094 10.1109/IGARSS46834.2022.9884094 info:eu-repo/semantics/altIdentifier/doi/10.1109/IGARSS46834.2022.9884094 info:eu-repo/semantics/altIdentifier/purl/https://doi.org/10.1109/IGARSS46834.2022.9884094
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language eng
description Nowadays, Satellite Image Time Series (SITS) are employed as input to derive land cover maps (LCM) to support decision makers in several application domains like agriculture and biodiversity. The generation of LCM largely relies on available ground truth (GT) data to calibrate supervised ma-chine learning models. Unfortunately, this data are not always accessible. In this scenario, the possibility to transfer a model learnt on a particular year (source domain) to another period of time (target domain) could be a valuable tool to deal with the previously mentioned restrictions. In this paper, we provide an experimental evaluation of recent Unsupervised Domain Adaptation (UDA) methods in the specific context of temporal transfer learning for SITS-based LCM. The objective is to learn a classification model at a certain year (exploiting available GT data) and, successively, transfer such a model on a subsequent year where no labelled samples are accessible. The obtained findings reveal that UDA methods represent a promising research direction to cope with the problem of temporal transfer learning for LCM. While a model learnt on the source data and directly applied on target data achieves an weighted F1-score of 67.1, the best UDA method obtains an F1-score of 83.7 with more than 15 points of positive gap. Nevertheless, there is still room for improvement that should be explored in future works.
format conference_item
author Capliez, Emmanuel
Ienco, Dino
Gaetano, Raffaele
Baghdadi, Nicolas
Hadj Salah, Adrien
spellingShingle Capliez, Emmanuel
Ienco, Dino
Gaetano, Raffaele
Baghdadi, Nicolas
Hadj Salah, Adrien
Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series
author_facet Capliez, Emmanuel
Ienco, Dino
Gaetano, Raffaele
Baghdadi, Nicolas
Hadj Salah, Adrien
author_sort Capliez, Emmanuel
title Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series
title_short Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series
title_full Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series
title_fullStr Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series
title_full_unstemmed Unsupervised domain adaptation methods for land cover mapping with optical satellite image time series
title_sort unsupervised domain adaptation methods for land cover mapping with optical satellite image time series
publisher IEEE
url http://agritrop.cirad.fr/607079/
http://agritrop.cirad.fr/607079/1/607079.pdf
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AT iencodino unsuperviseddomainadaptationmethodsforlandcovermappingwithopticalsatelliteimagetimeseries
AT gaetanoraffaele unsuperviseddomainadaptationmethodsforlandcovermappingwithopticalsatelliteimagetimeseries
AT baghdadinicolas unsuperviseddomainadaptationmethodsforlandcovermappingwithopticalsatelliteimagetimeseries
AT hadjsalahadrien unsuperviseddomainadaptationmethodsforlandcovermappingwithopticalsatelliteimagetimeseries
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