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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
water can help to assign the ambiguous object rather to the class
grass than to residential area.
Name
[paved lot - empty [ |
]pave empty | ERE vi
Parent class for display Modifiers
[ Abstract [7 Inactive
| area without vegetation vi
, = -—
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A GLCM Homogeneity, all dir., se_ext_02102001_balt_city_
V/* GLCM Homogeneily, all di., se ext 02102001 balt city -
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LA Level
| V*X Mean se ext 02102001 balt city ms&ndvi.img (5)
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OK Cancel |
Figure 2. Class Description for parking lot — empty.
Figure 2 describes one class in the classification scheme. The
class information area without vegetation is ‘inherited’ from the
higher group level. The expert knowledge incorporates how a
class is best described. It is shown that to assign the class
parking lot — empty the mean value taken from band 5 (i.e.
NDVI) is needed as well as textural information from several
bands. Each feature encloses a membership function in which
the threshold for the respective band or texture information is
set-up by the user in a fuzzy range of values. The texture
features evaluate the texture of the image object based on the
gray level co-occurrence matrix (GLCM).
2.4 Fuzzy Logic Classification
Once all membership functions are set and the classes are
defined in a best suited manner then each object is compared to
cach class description in the supervised classification. Its
contained and inherited expressions produce membership values
for each object and according to the highest membership value
each object is then classified. If the membership value of an
image object is lower than the predefined minimum
membership value, the image object will remain unclassified.
So technically speaking, a classification using a fuzzy rule base
is done by finding out which combination of fuzzy features is
suitable to distinguish one class from the others.
The classification does not produce brownfields sites as a
resulting class, but delineates the above mentioned object
classes. So the classification is an intermediate step towards the
targeted land use detection. In the next and final step, certain
classes are put together on a knowledge based rule to define
potential brownfields sites as so-called structure groups.
463
Figure 3. Classified image sample showing large industrial
buildings (in light and dark grey), various numbers of cars on
parking lots (in red, purple, and pink), impervious surface
without distinction (in white) grass (in bright green), neglected
sparce vegetation (in olive green).
The classified image sample shown in Figure 3 shows the same
subset as the Ikonos imagery in Figure 1 in order to visually
follow-up on the procedure.
2.5 Structure Groups
So far the image objects follow the rule on which the image is
segmented and the output classification underlies the same
object pattern (see Johnsson, 1994). These segmented and
classified image objects now need to be structured. Such objects
of interest are knowledge-based and do not need to meet
homogeneous standards. They are defined in structure groups
which contain the criteria for a classification-based
segmentation. All classes within one structure group are treated
as fitting to each other, even if they represent very different
class descriptions.
As mentioned in chapter 2.2 the potential brownfields sites are
presumed to consist of various objects. Therefore not all objects
of the resulting classification are taken to be structured into
semantically more meaningful groups but only those needed to
describe the very target group. So the structure groups for
potential Brownfields sites follow a certain pattern. They are
composed of the following objects but vary in their presence or
absence. Examples of the criteria variations for potential target
sites are given below:
Potential Brownfields sites I
e Industrial / commercial building
e Paved parking lots — empty
e Neglected green spaces
Potential Brownfields sites II