2022
DOI: 10.5194/essd-2022-312
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TreeSatAI Benchmark Archive: A multi-sensor, multi-label dataset for tree species classification in remote sensing

Abstract: Abstract. Airborne and spaceborne platforms are the primary data sources for large-scale forest mapping, but visual interpretation for individual species determination is labour-intensive. Hence, various studies focusing on forests have investigated the benefits of multiple sensors for automated tree species classification. However, transferable deep learning approaches for large-scale applications are still lacking. This gap motivated us to create a novel dataset for tree species classification in Central Eur… Show more

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“…Other challenge in large-scale classification is the limited availability of reference data, especially for less common species (Zeug et al, 2018), leading to poorer performance for underrepresented species (Hemmerling et al, 2021;Marconi et al, 2022;Ahlswede et al, 2022). Finally, species classification for large regions requires handling high-volume spatial datasets, which may be difficult to process using locally installed, monolithic software.…”
Section: Introductionmentioning
confidence: 99%
“…Other challenge in large-scale classification is the limited availability of reference data, especially for less common species (Zeug et al, 2018), leading to poorer performance for underrepresented species (Hemmerling et al, 2021;Marconi et al, 2022;Ahlswede et al, 2022). Finally, species classification for large regions requires handling high-volume spatial datasets, which may be difficult to process using locally installed, monolithic software.…”
Section: Introductionmentioning
confidence: 99%