87
grid size is suitable is only valid in relation to the specific forest shape. Contrary to the forest, the water area
change, using ‘polygrid’, is less than 0.04 percent. Water is a very compact element in our testsite with boundaries
of low structure.
Figure - 1: Part of the forest groundtruth in original vector representation (left), derivated 10 m( centre) and
100 m( right) raster representation using ‘polygrid’.
3.1.1. Compactness
Area change detection is only significant for the total groundtruth coverage. The shape of the groundtruth is as
well influenced by the differing character of vector and grid representations. Small groundtruth patches with fine
tailored boundaries are easy to describe in vector, but difficult or impossible in raster representation. A morpho
logic descriptor to detect significant changes is compactness (or complexity, circularity ) by Castleman (1979), as
described in Meyer (1992). Compactness C gives a good relationship between boundary and area in the following
manner
( 1 )
where P 2 is the square of the perimeter ( m 2 ) and where A the area ( m 2 ).
The minimal value of compactness is 4it in the case of a circle. A regular pixel will have a compactness of
16. The heavy black line in figure - 2 (bottom) shows the compactness of vector forest data and the derivated grid
forest data on different levels. The enormous compactness values are typical for the forest shape in the testsite.
The analogue values for the water compactness are about 300 times smaller. Inverse parallel to the area change, a
significant higher compactness on 10 m resolution can be detected, due to the raster representation of small
patches. With increasing grid cell size, the compactness goes down. Less (but bigger) pixels have smaller bound
aries and as conclusion smaller compactness values.
3.2. Scale Change on Raster Data
Scaling groundtruth in raster representation, such as forest / non-forest, to satellite data resolution cannot be done
using standard algorithms like ‘nearest neighbour’ or ‘cubic convolution’ sampling, as they do not pay attention
to the discrete thematic data and as they only grab data in local regions around the center pixel. Resizing or resa
mpling of thematic groundtruth must be performed by statistical interpretation of the area , covered by a goal
pixel, on the starting coverage. This can only be done treating the pixels as areas and combining the data, if neces
sary, over fractions of input pixels. An algorithm was developed to resize thematic grid information in a new
scaled grid where each pixel contains the mode, median or the fraction of a selected information class of the input
data set covered by the output pixel.
Resizing a binary thematic groundtruth from, for example, 10 m grid resolution to 20 m resolution, select
ing the covered area percentage as output option maintains the information of the input data and is therefore
invertible. To obtain the corresponding binary groundtruth from the just generated 20 m level, there is a need of