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Federated learning in forest resource modelling and monitoring: Bridging data confidentiality and collaborative research

dc.contributor.authorSchumacher, Johannes
dc.contributor.authorCescatti, Alessandro
dc.contributor.authorChirici, Gherardo
dc.contributor.authorD’Amico, Giovanni
dc.contributor.authorFrancini, Saverio
dc.contributor.authorHertzler, Johannes
dc.contributor.authorMehtätalo, Lauri
dc.contributor.authorNabuurs, Gert-Jan
dc.contributor.authorNilsson, Mats
dc.contributor.authorPitkänen, Juho
dc.contributor.authorBreidenbach, Johannes
dc.contributor.departmentid4100310510
dc.contributor.departmentid4100310510
dc.contributor.orcidhttps://orcid.org/0000-0002-8128-0598
dc.contributor.orcidhttps://orcid.org/0000-0002-7583-6297
dc.contributor.organizationLuonnonvarakeskus
dc.date.accessioned2026-07-02T09:56:00Z
dc.date.issued2026
dc.description.abstractThe availability of reliable ground-truth data is one of the main bottlenecks for improving high-resolution forest attribute maps from Earth observation data. This is underpinned by the European Union (EU) Forest Strategy for 2030 that underscores the need for harmonized, cross-border forest resource assessments that integrate both remote sensing and field-based National Forest Inventory (NFI) data. However, confidentiality constraints on NFI plot coordinates present a significant barrier to aligning these datasets, thereby limiting the development of unified forest monitoring systems that can fully leverage the potential of Earth Observation data. To overcome these data-sharing limitations we explored the effectiveness of a privacy-enhancing technique, known as Federated Learning (FL), that is a form of distributed computing aimed at preserving the privacy and confidentiality of data owned by different organizations. This methodology has been tested for the collaborative modelling and mapping of forest timber volume across four European countries: Norway, Sweden, Finland, and Italy. We employed a time-series convolutional neural network (CNN) architecture tailored to integrate 40 years of Landsat or 7 years of Sentinel imagery and terrain variables with harmonized NFI data from more than 85,000 sample plots. This model architecture was used for the FL approach and compared to traditional country-specific and centralized modelling strategies. FL models achieved predictive performances comparable to the traditional models, which proofs the effectiveness of the proposed approach. Centralized or global models showed slightly reduced performance compared to the national models, highlighting the value of fine-tuning with local ground-truth data. By aligning with the EU’s forest monitoring objectives, FL facilitates the generation of harmonized models and maps of forest features, like timber volume and biomass, that are critical to support evidence-based forest policy and management. The findings underscore the potential of FL to transform collaborative environmental monitoring, particularly in domains where data confidentiality and interoperability are critical.
dc.format.pagerange14 p.
dc.identifier.citationHow to cite: Johannes Schumacher, Alessandro Cescatti, Gherardo Chirici, Giovanni D’Amico, Saverio Francini, Johannes Hertzler, Lauri Mehtätalo, Gert-Jan Nabuurs, Mats Nilsson, Juho Pitkänen, Johannes Breidenbach, Federated learning in forest resource modelling and monitoring: Bridging data confidentiality and collaborative research, International Journal of Applied Earth Observation and Geoinformation, Volume 152, 2026, 105452, ISSN 1569-8432, https://doi.org/10.1016/j.jag.2026.105452.
dc.identifier.urihttps://jukuri.luke.fi/handle/11111/104175
dc.identifier.urlhttps://doi.org/10.1016/j.jag.2026.105452
dc.identifier.urnURN:NBN:fi-fe20260702108758
dc.language.isoen
dc.okm.avoinsaatavuuskytkin1 = Avoimesti saatavilla
dc.okm.corporatecopublicationei
dc.okm.discipline4112
dc.okm.discipline1171
dc.okm.internationalcopublicationon
dc.okm.julkaisukanavaoa1 = Kokonaan avoimessa julkaisukanavassa ilmestynyt julkaisu
dc.okm.selfarchivedon
dc.publisherElsevier
dc.relation.articlenumber105452
dc.relation.doi10.1016/j.jag.2026.105452
dc.relation.ispartofseriesInternational journal of applied earth observation and geoinformation
dc.relation.issn1569-8432
dc.relation.issn1872-826X
dc.relation.volume152
dc.rightsCC BY 4.0
dc.source.justusid143041
dc.subjectforest resource mapping
dc.subjectsatellite remote sensing
dc.subjectearth observation
dc.subjectdeep learning
dc.subjectdistributed modelling
dc.subjectnational forest inventory
dc.subjectdata privacy
dc.teh41007-00279900
dc.titleFederated learning in forest resource modelling and monitoring: Bridging data confidentiality and collaborative research
dc.typepublication
dc.type.okmfi=A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä|sv=A1 Originalartikel i en vetenskaplig tidskrift|en=A1 Journal article (refereed), original research|
dc.type.versionfi=Publisher's version|sv=Publisher's version|en=Publisher's version|

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