Knowledge-Based Classification of Grassland Ecosystem Based on Multi-Temporal WorldView-2 Data and FAO-LCCS Taxonomy
Academic Article
Publication Date:
2020
abstract:
Grassland ecosystems can provide a variety of services for humans, such as carbon storage,
food production, crop pollination and pest regulation. However, grasslands are today one of the
most endangered ecosystems due to land use change, agricultural intensification, land abandonment
as well as climate change. The present study explores the performance of a knowledge-driven
GEOgraphic-Object--based Image Analysis (GEOBIA) learning scheme to classify Very High
Resolution (VHR) images for natural grassland ecosystem mapping. The classification was applied to
a Natura 2000 protected area in Southern Italy. The Food and Agricultural Organization Land Cover
Classification System (FAO-LCCS) hierarchical scheme was instantiated in the learning phase of the
algorithm. Four multi-temporal WorldView-2 (WV-2) images were classified by combining plant
phenology and agricultural practices rules with prior-image spectral knowledge. Drawing on this
knowledge, spectral bands and entropy features from one single date (Post Peak of Biomass) were
firstly used for multiple-scale image segmentation into Small Objects (SO) and Large Objects (LO).
Thereafter, SO were labelled by considering spectral and context-sensitive features from the whole
multi-seasonal data set available together with ancillary data. Lastly, the labelled SO were overlaid
to LO segments and, in turn, the latter were labelled by adopting FAO-LCCS criteria about the SOs
presence dominance in each LO. Ground reference samples were used only for validating the SO
and LO output maps. The knowledge driven GEOBIA classifier for SO classification obtained an OA
value of 97.35% with an error of 0.04. For LO classification the value was 75.09% with an error of 0.70.
At SO scale, grasslands ecosystem was classified with 92.6%, 99.9% and 96.1% of User's, Producer's
Accuracy and F1-score, respectively. The findings reported indicate that the knowledge-driven
approach not only can be applied for (semi)natural grasslands ecosystem mapping in vast and not
accessible areas but can also reduce the costs of ground truth data acquisition. The approach used
may provide different level of details (small and large objects in the scene) but also indicates how to
design and validate local conservation policies.
Iris type:
01.01 Articolo in rivista
Keywords:
expert knowledge; Very High Resolution (VHR); grasslands ecosystems; object-based classification
List of contributors:
Blonda, PALMA NICOLETTA; Tomaselli, VALERIA MARIA FEDERICA; Vicario, Saverio; Adamo, Maria; Tarantino, Cristina
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