International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
Figure 1. Brownfields sites in the southeast of Baltimore City
near the Harbour. The yellow line shows the parcel boundaries.
2. CLASSIFICATION SCHEME
2.1 Image Pre-processing
Ikonos provides both, multispectral and panchromatic data with
a spatial resolution of four and one meter respectively. Having
the four multispectral bands with red, green, blue, and infrared
at hand, the NDVI could be calculated for the image and
stacked to the four bands as a synthetic fifth band. There is no
necessity to perform an image data fusion because the software
eCognition allows a multiresolution segmentation with the
chosen bands weighted individually. Segmenting the image 1s
an important prerequisite as it subdivides the image into a given
number of separate regions. There is a high number of degrees
of freedom which could be reduced to two degrees to obtain
optimal objects for this classification scheme on urban
Brownfields. These levels are connected in a hierarchical
manner and represent image information in different levels
simultaneously (Baatz et al., 2000).
2.2 Class Definition
Before classes are defined and the analysis should start it has to
be clarified what the classification is aiming at. So the question
has to be answered with which classes a Brownfields sites is
expected to be described. The challenge of this study is to
classify a land use type so it is tried to cut down the description
of its use to its spatial appearance. The physical characteristics
of the site may consist of different objects such as buildings
(more or less rotten), impervious surface such as parking lots,
roads and road access, and also sparse, neglected vegetation.
When thinking about the information for a Brownfields taken
from parking lots that are either intensely used, have few cars
only, or are not used at all it is important to take into
consideration which day of the week the image was acquired. It
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is assumed that on a Brownfields site the parking lots are either
empty or have few cars only. So if it was taken on a weekend,
this information needed to be discarded. In this case the image
information was gathered on a workday (Tuesday) later in the
morning so it can be assumed that the amount of cars on an
industrial or commercial parking lot represent some higher or
lower intensity of business activities.
Although this definition is not unambiguous the necessity to
find and describe parameters that sufficiently outline potential
Brownfields sites by means of their surficial character is
irrevocable.
The frame of the knowledge base for the classification is the
class hierarchy which contains all.classes of the classification
scheme. On the higher level of segmentation the image was
being classified into areas with and without vegetation. As
Baltimore is located at the Patapsco River estuary, an arm of
Chesapeake Bay with a large harbour area, wafer is a dominant
class taken separately and not being subdivided.
On the lower level of segmentation meaningful classes were
defined for the land use type of Brownfields and assigned to
their super-objects area wifhout vegetation and area with
vegetation. The assignment to these ‘super-objects’ was as
follows (see example given in Figure 2).
The class hierarchy of area without vegetation contains:
e Industrial / commercial building I (white roof)
9 Industrial / commercial building II (black roof)
e [Industrial / commercial building III (mixed roof struc-
ture)
e High intensity commercial / industrial area
e Paved parking lots - empty
e Paved parking lots - with few cars or cargo
e Paved parking lots - with many cars or cargo
e Bare soil
As the Ikonos imagery offers very high resolution even in the
multispectral bands roof types needed to be differentiated which
increased the number of classes without increasing the semantic
contents and made the classification more complex than
demanded. A gain in information is that number of cars and
their density is easily seen which is an important issue in terms
of the presumption for the surficial ^ appearance of a
Brownfields site.
The class hierarchy for area with vegetation contains:
e Residential area / single buildings
e Intermediate intensity commercial / industrial arca
e Urban woodland
e Grass (lawn, park)
e Neglected green spaces
2.3 Class Description
To construct an elaborate knowledge base the best suiting
features are taken to separate the target classes. The range of
features goes from object features which include spectral image
information, shape, texture, and hierarchy, to class-related
features, i.e. relations to neighbour objects, sub- or super-
objects, memberships and some more.
So parking lots can be classified by means of their spectral
reflectance, and the amount of cars on a parking lot can be
distinguished by its textural information (see Figure 2). Some
classes also need to be characterised by their distance to a
neighboring class, so if, for example, parks and some residential
areas are difficult to distinguish, then the relative border to
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