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In addition, it was investigated that adding artificial processed
Bands facilitate improving the results in both approaches. Use
of suitable processing bands such as those were used in the
pixel-based classification together with main ETM+ bands
could slightly improve the results (3%). These additional bands
contained useful information, which have increased the
seprabilty of forest types in the feature Space as well as have
reduced images errors. In addition, in the Object oriented
method, use of artificial bands in segmentation as well as in
classification as suitable descriptions could improve the results
(by 2.5 to 5.5 94),
Pixel
Object oriented techniques
based
method Membership Integration
function technigue
Overall
accuracy
(76)
Kappa
(76)
58.5
Table 4: comparison of classification results of pixel-based and
objects oriented methods by main ETM+ bands
Pixel Object oriented techniques
based
Nearest
method | Membership
function Neighbour
i
Table 5: comparison of classification results of pixel-based and
objects oriented methods by main ETM- and the best bands
Integration
technique
Overall
accuracy
(76)
Kappa
(70)
60.7
44.4
In the object-oriented approach, image is segmented to different
objects. Before segmentation at satellite images, the image
objects are heterogeneous due to diversity of spectral
information in pixels. After segmentation, heterogeneity of
image objects will reduce. It led to easier seperabilty of objects,
due to increasing of contrast between them. See figure 6B.
Figure 6: The pixel-based classification in a masked area (6A)
and the object-oriented classification in the same area (6B). See
Salt-peppery image at the pixel-based method.
Among three objects oriented techniques, which were used to
extract the forest types, integration of the nearest neighbor and
membership function method showed high capability to stratify
forest types.
1109
emote Sensing and Spatial Information Sciences, Vol XXXV ;
Part B7. Istanbul 2004
In the membership function, determining of the suitable feature
that exactly separates types was very difficult. Optical
interpretation of images and their attributes could help to find
the best descriptions. However, its result quality was low among
other object-oriented methods (48.8 and 51.3 % in the both data
set respectively).
As the results of pixel based classification and separabilty
assessment showed, the forest types could not be completely
separated by a few features. In the other hand, the nearest
neighbor method classified the forest types in the multi-feature
Spaces. It caused better result than the membership function
method (57.2 %).
By using of both the nearest neighbor and the membership
function in the classification integrately, the overall accuracy of
result increased to 60.7 94. Whereas, use of obtained
information from training objects to define suitable descriptions
of classes and use of membership function to re-correct classes
Were reasons of improvement.
Increasing of the kappa by 255 y, in the pixel based
classification to 44.4 % in the object oriented approaches
showed the capability of multi-resolution segmentation of data
to provide other useful attributes in addition to Spectral
information as well as reducing of heterogeneity in image
objects.
The results show that since forest type’s signatures have high
overlaps on every band individually, they can not be separated
by a few parameters (feature spaces). As the result, it js
recommended to use the nearest neighbor method at first step
and then membership to refine classification of images.
However, there are some reasons for low accuracy in both
methods contrary to other image classifications such as land
cover or land use. First, it refers to significant overlaps in the
spectral attributes between the most of the mixed type and the
mixed Fagus as well as the mixed Carpinus in some places in
the study area. In addition, similarity Of spectral attributes in the
pure Fagus with the mixed Fagus types caused that they could
not be completely separated well (see table 3). Second, the
effect of topography and different illumination at the different
aspects in the study caused that a similar type reflected different
Spectral attributes.
Although the considerable result have got by the object oriented
methods in compare with the pixel-based classification method,
but recognition of heterogeneous objects in forest area
especially in the hardwood forests was difficult because of
mixed species and also contrast of objects borders was low.
Use of different data in terms of resolution and Spectral
information can be examined to extract the forest types and
certificate the results by the object-oriented approaches in
future. Integrating of ancillary data in corporation with satellite
data is expected to improve results
ACKNOWLEDGEMENTS
This study was performed at the remote sensing laboratory of
department of geography, Zurich University and has been
funded by Tehran University and Zurich University. We would
like to thank the head of group professor Claus Itten for his
supports in this study.