A Survey of Active Learning for Quantifying Vegetation Traits from Terrestrial Earth Observation Data.
EnMAP
Gaussian process regression
hyperspectral
optimal experimental design
query strategies
Journal
Remote sensing
ISSN: 2072-4292
Titre abrégé: Remote Sens (Basel)
Pays: Switzerland
ID NLM: 101624426
Informations de publication
Date de publication:
15 Jan 2021
15 Jan 2021
Historique:
entrez:
9
9
2022
pubmed:
15
1
2021
medline:
15
1
2021
Statut:
epublish
Résumé
The current exponential increase of spatiotemporally explicit data streams from satellitebased Earth observation missions offers promising opportunities for global vegetation monitoring. Intelligent sampling through active learning (AL) heuristics provides a pathway for fast inference of essential vegetation variables by means of hybrid retrieval approaches, i.e., machine learning regression algorithms trained by radiative transfer model (RTM) simulations. In this study we summarize AL theory and perform a brief systematic literature survey about AL heuristics used in the context of Earth observation regression problems over terrestrial targets. Across all relevant studies it appeared that: (i) retrieval accuracy of AL-optimized training data sets outperformed models trained over large randomly sampled data sets, and (ii) Euclidean distance-based (EBD) diversity method tends to be the most efficient AL technique in terms of accuracy and computational demand. Additionally, a case study is presented based on experimental data employing both uncertainty and diversity AL criteria. Hereby, a a simulated training data base by the PROSAIL-PRO canopy RTM is used to demonstrate the benefit of AL techniques for the estimation of total leaf carotenoid content (
Identifiants
pubmed: 36081683
doi: 10.3390/rs13020287
pmc: PMC7613397
mid: EMS152662
doi:
Types de publication
Journal Article
Langues
eng
Pagination
287Subventions
Organisme : European Research Council
ID : 755617
Pays : International
Déclaration de conflit d'intérêts
Conflicts of Interest: The authors declare no conflict of interest.
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