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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
continuing upscaling to lower spatial resolution while the
proportion of unclassified pixels will increase (Gupta et al.,
2000). An aggregation of classes will occur.
Primary Secondary Pastures Recently
forest forest fai ___Cut areas
AIRSAR map 68.41% 17.98% 6.51% 7.11%
Approach 1 68.39% 17.94% 6.70% 6.97%
Approach 2 68.08% 18.17% 6.63% 7.11%
Table 2. Comparison of upscaling approaches based on the
proportion of land cover classes
In this research, upscaling was done by nearest neighbour
resampling of classified data, so there was neither a problem of
class aggregation nor of an increase of unclassified pixels.
As shown in Table 2, both in the first and in the second
upscaling approach barely any change in the proportion of land
cover classes could be discovered. By comparing the
percentages of the land cover classes, it can be seen that the
proportions stayed almost the same.
4.1.2 Changes in number and size of patches
As another possibility to detect changes caused by the process
of upscaling of the AIRSAR land cover map, unique identifiers
were assigned to the pixels with the same class names that are
horizontally, vertically and diagonally connected. This was
applied for each upscaling step. These connected areas are
called patches, since a patch is a set of neighbouring pixels of
the same class. The output was a map in which the connected
areas are coded. Furthermore, an attribute table was created for
the output map containing the size of the unique output units.
A 3 x 3 filter was moved over the map and a value was assigned
to the centre pixel of the filter in the output map depending on
the values of the centre pixel itself and its eight neighbouring
pixels in the input map.
8
Number of patches
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8 8
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6 7 8 9 10 11 12
Figure 3. Comparison of upscaling approaches based on the
number of patches
By comparing the two upscaling approaches, a strong decrease
in the number of patches was found in both. In the first
approach, stepwise upscaling with interim results, 763 out of
2638 patches remained at a resolution of 12.5 m. In the second
approach, direct upscaling to different levels from the same
basis, 913 patches out of 2638 remained. As shown in Figure 3,
both curves have a similar course with a small difference along
the y-axis. Nevertheless, the direct upscaling approach gave a
larger number of remaining patches and better visual results.
959
Furthermore, the size and the shape of the patches were kept
longer during the direct upscaling process.
With regard to the size of the patches, it can be stated that in
both upscaling processes small patches loose their shape or
disappear during upscaling to lower spatial resolution and
bigger patches remain longer and keep their recognizable shape
as well.
4.2 Conformity of land cover maps
The conformity of the land cover maps was determined with the
help of the so-called cross operation. This operation performs
an overlay of two land cover maps and compares the class
values on the same positions in both maps. The combinations of
class values that occur are stored. The output is a cross map and
a cross table. The cross table includes all combinations of the
input classes of both maps and the number of pixels for each
combination. With the help of the cross table a cross matrix is
calculated to compare two land cover maps by evaluating the
number of matching pixels.
Land cover class | Conformity
AIRSAR and ERS-1 (until 28-09-1993)
Pasture 59%
Pasture and secondary forest 0%
Primary forest 91%
Recently cut areas 0%
Secondary forest 16%
AIRSAR and ERS-1 (until 05-09-1994)
Pasture 63%
Pasture and secondary forest 0%
Primary forest 86%
Recently cut areas 0%
Secondary forest 24%
Table 4. Conformity of cross maps
When assessing the conformity of two land cover maps, the
same logic as in an ordinary confusion matrix is used. Not the
single classification but rather the difference between the two
classifications is considered. Nevertheless, the outcome of a
cross map is strongly influenced by the accuracies of the two
independent classifications used for the cross matrix.
Classification errors in either of the classifications could result
in non-conformity of classes.
According to Quifiones (1995), the results of the classification
of the original AIRSAR image indicate that 89% of the
secondary forest, 100% of the pastures, 97% of the primary
forest and 92% of the recently cut areas were classified
correctly. Consequently, the overall accuracy is 95%. The
overall accuracy of the ERS-1 land cover maps varies with time
from 65% to 70%, but they contain a mixed class of pasture and
secondary vegetation. The pixels of this mixed class were
included into the other classes, which influences the result of
the conformity. The mismatches occurred mainly between this
mixed class of the ERS-1 classification and the AIRSAR land
cover classes secondary forest and pastures.
First, the ERS-1 land cover map of 28-09-1993 was chosen
because it has the same year of acquisition as the AIRSAR
image. The low value for the conformity of the secondary forest
is influenced by the mixed class pasture and secondary
vegetation of the ERS-1 land cover map, but also by the fact
that the ERS-1 sensor has difficulties in separating the
secondary forest from primary forest and pastures. The cross