4.7 Article

Intra-Annual Sentinel-2 Time-Series Supporting Grassland Habitat Discrimination

Journal

REMOTE SENSING
Volume 13, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/rs13020277

Keywords

grassland; habitat mapping; Natura 2000; Sentinel-2; spectral index; time-series

Funding

  1. H2020 E-SHAPE project-EuroGEO Showcases: Applications Powered by Europe [820852]
  2. COHECO project-Sistema Integrato di Monitoraggio, Allerta e Prevenzione dello stato di COnservazione di Habitat ed ECOsistemi in aree interne e costiere protette e da proteggere

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This study aimed to discriminate four semi-arid grassland habitats in a Mediterranean Natura 2000 site in Southern Italy, using a two-stage workflow and Support Vector Machine classifier with time-series analysis of Sentinel-2 images. Results showed that the phenology information from time-series can improve the discrimination of grassland habitats, although a Majority Vote algorithm was applied to reduce classification uncertainty due to no single effective configuration for all four habitats.
The present study aims to discriminate four semi-arid grassland habitats in a Mediterranean Natura 2000 site, Southern Italy, involving 6210/E1.263, 62A0/E1.55, 6220/E1.434 and X/E1.61-E1.C2-E1.C4 (according to Annex I of the European Habitat Directive/EUropean Nature Information System (EUNIS) taxonomies). For this purpose, an intra-annual time-series of 30 Sentinel-2 images, embedding phenology information, were investigated for 2018. The methodology adopted was based on a two-stage workflow employing a Support Vector Machine classifier. In the first stage only four Sentinel-2 multi-season images were analyzed, to provide an updated land cover map from where the grassland layer was extracted. The layer obtained was then used for masking the input features to the second stage. The latter stage discriminated the four grassland habitats by analyzing several input features configurations. These included multiple spectral indices selected from the time-series and the Digital Terrain Model. The results obtained from the different input configurations selected were compared to evaluate if the phenology information from time-series could improve grassland habitats discrimination. The highest F1 values (95.25% and 80.27%) were achieved for 6210/E1.263 and 6220/E1.434, respectively, whereas the results remained stable (97,33%) for 62A0/E1.55 and quite low (75,97%) for X/E1.61-E1.C2-E1.C4. However, since for all the four habitats analyzed no single configuration resulted effective, a Majority Vote algorithm was applied to achieve a reduction in classification uncertainty.

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