Synergy of airborne LiDAR and Worldview-2 satellite imagery for land cover and habitat mapping: A BIO_SOS-EODHaM case study for the Netherlands
Articolo
Data di Pubblicazione:
2015
Abstract:
A major challenge is to develop a biodiversity observation system that is cost effective and applicable in
any geographic region. Measuring and reliable reporting of trends and changes in biodiversity requires
amongst others detailed and accurate land cover and habitat maps in a standard and comparable way.
The objective of this paper is to assess the EODHaM (EO Data for Habitat Mapping) classification results
for a Dutch case study. The EODHaM system was developed within the BIO SOS (The BIOdiversity multiSOurce monitoring System: from Space TO Species) project and contains the decision rules for each land
cover and habitat class based on spectral and height information. One of the main findings is that canopy
height models, as derived from LiDAR, in combination with very high resolution satellite imagery provides
a powerful input for the EODHaM system for the purpose of generic land cover and habitat mapping for
any location across the globe. The assessment of the EODHaM classification results based on field data
showed an overall accuracy of 74% for the land cover classes as described according to the Food and
Agricultural Organization (FAO) Land Cover Classification System (LCCS) taxonomy at level 3, while the
overall accuracy was lower (69.0%) for the habitat map based on the General Habitat Category (GHC)
system for habitat surveillance and monitoring. A GHC habitat class is determined for each mapping unit
on the basis of the composition of the individual life forms and height measurements. The classification
showed very good results for forest phanerophytes (FPH) when individual life forms were analyzed in
terms of their percentage coverage estimates per mapping unit from the LCCS classification and validated
with field surveys. Analysis for shrubby chamaephytes (SCH) showed less accurate results, but might also
be due to less accurate field estimates of percentage coverage. Overall, the EODHaM classification results
encouraged us to derive the heights of all vegetated objects in the Netherlands from LiDAR data, in
preparation for new habitat classifications.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
LiDAR; Optical remote sensing; Vegetation structure; Land cover; General habitat categories
Elenco autori:
Blonda, PALMA NICOLETTA; Adamo, Maria
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