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Review

Sentinel-2 Land Cover Classification: State-of-the-Art Methods and the Reality of Operational Deployment—A Systematic Review

Department of Civil Engineering, Military Engineering and Geomatics, Faculty of Integrated Systems, Military Engineering and Mechatronics, Military Technical Academy Ferdinand I, 050141 Bucharest, Romania
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Sustainability 2025, 17(22), 10324; https://doi.org/10.3390/su172210324
Submission received: 12 October 2025 / Revised: 10 November 2025 / Accepted: 14 November 2025 / Published: 18 November 2025

Abstract

This systematic review investigates recent advances and persistent challenges in Land Use and Land Cover (LULC) classification using Sentinel-2 imagery, emphasizing the gap between benchmark results and operational performance. Following PRISMA guidelines, we analyzed 89 peer-reviewed studies published between 2020–2025 to address the discrepancy between academic benchmarks and real-world deployment. While benchmark datasets such as EuroSAT routinely achieve accuracies above 98%, operational systems deployed at regional or global scales typically reach only 75–85%. Through systematic analysis and meta-analysis of reported results, we identify three main factors: (i) methodological issues, particularly the inflation of reported accuracies caused by spatial autocorrelation; (ii) domain adaptation limitations, where geographic and temporal transferability reduce accuracy by 15–25%; (iii) training data constraints, where geographic diversity proves more important than sample size. Multi-spectral approaches provide modest 5–8% gains over RGB at significantly higher computational costs. Foundation models (e.g., Prithvi, Sky Sense) and self-supervised learning show promise for reducing data requirements while maintaining performance. Comparisons with operational products such as ESA WorldCover and Google Dynamic World confirm the more modest performance achievable under real-world conditions. The findings emphasize the need for rigorous spatial validation protocols, standardized evaluation frameworks, and closer integration between research and operational development.
Keywords: Sentinel-2; land use land cover; deep learning; remote sensing; domain adaptation; accuracy assessment; EuroSAT; foundation models; systematic review; meta-analysis Sentinel-2; land use land cover; deep learning; remote sensing; domain adaptation; accuracy assessment; EuroSAT; foundation models; systematic review; meta-analysis

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MDPI and ACS Style

Jocea, A.F.; Porumb, L.; Necula, L.; Raducanu, D. Sentinel-2 Land Cover Classification: State-of-the-Art Methods and the Reality of Operational Deployment—A Systematic Review. Sustainability 2025, 17, 10324. https://doi.org/10.3390/su172210324

AMA Style

Jocea AF, Porumb L, Necula L, Raducanu D. Sentinel-2 Land Cover Classification: State-of-the-Art Methods and the Reality of Operational Deployment—A Systematic Review. Sustainability. 2025; 17(22):10324. https://doi.org/10.3390/su172210324

Chicago/Turabian Style

Jocea, Andreea Florina, Liviu Porumb, Lucian Necula, and Dan Raducanu. 2025. "Sentinel-2 Land Cover Classification: State-of-the-Art Methods and the Reality of Operational Deployment—A Systematic Review" Sustainability 17, no. 22: 10324. https://doi.org/10.3390/su172210324

APA Style

Jocea, A. F., Porumb, L., Necula, L., & Raducanu, D. (2025). Sentinel-2 Land Cover Classification: State-of-the-Art Methods and the Reality of Operational Deployment—A Systematic Review. Sustainability, 17(22), 10324. https://doi.org/10.3390/su172210324

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