Detection of changes in semi-natural grasslands by cross correlation analysis with Worldview-2 images and new Landsat 8 data
Academic Article
Publication Date:
2016
abstract:
Focusing on a Mediterranean Natura 2000 site in Italy, the effectiveness of the cross correlation analysis (CCA)
technique for quantifying change in the area of semi-natural grasslands at different spatial resolutions (grain)
was evaluated. In a fine scale analysis (2 m), inputs to the CCA were a) a semi-natural grasslands layer extracted
from an existing validated land cover/land use (LC/LU) map (1:5000, time T1) and b) a more recent single date
very high resolution (VHR) WorldView-2 image (time T2), with T2 N T1. The changes identified through the
CCA were compared against those detected by applying a traditional post-classification comparison (PCC)
technique to the same reference T1 map and an updated T2 map obtained by a knowledge driven classification
of four multi-seasonal Worldview-2 input images. Specific changes observed were those associated with agricultural
intensification and fires. The study concluded that prior knowledge (spectral class signatures, awareness of
local agricultural practices and pressures) was needed for the selection of the most appropriate image (in terms
of seasonality) to be acquired at T2. CCA was also applied to the comparison of the existing T1 map with recent
high resolution (HR) Landsat 8 OLS images. The areas of change detected at VHR and HR were broadly similar
with larger error values in HR change images.
Iris type:
01.01 Articolo in rivista
Keywords:
Change detection; Semi-natural grasslands; Earth observation data; Very high resolution; Landsat 8 OLS
List of contributors:
Blonda, PALMA NICOLETTA; Adamo, Maria; Tarantino, Cristina
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