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discrete areas of relatively homogeneous environmental
conditions, the definition of which is artificially imposed
according to a phenomenon of interest and only meaningful
when referenced to a particular scale. For example, the urban
landscape of Los Angeles can be described as a mosaic of
census tracts. The census tract in this case can be thought of as
a patch that is relatively homogeneous in terms of social and
physical characteristics. Similarly, at a larger scale, a census
tract can be viewed as a mosaic (or landscape) of its own,
consisting of smaller patches of land cover classes represented
by a collection of pixels in a remotely sensed image. While
individual pixels (the construction blocks of patches) possess
uniform spatial characteristics (e.g., identical size, perimeter,
and shape), the aggregation of these pixels provides a rich set of
properties. These properties depend on whether the pixels are
aggregated over a single land cover class (patch) or multiple
classes, and whether the aggregation is considered within a
specified census tract. Landscape metrics make use of these
properties to reveal the spatial character and distribution of
patches, and thus to quantify landscape patterns (O'Neill et al.,
1988).
The proposed methodology uses a subset of landscape metrics
as a way of quantifying the configuration and composition of
spatial variation of land cover fraction changes produced by
MESMA. Calculating these metrics at the census tract level
(ie., each tract is considered as a collection of land cover
patches) provides an additional means of establishing and
testing the link between both social and physical drivers of
urban land cover change and sustainable policies implemented
at the local level. The temporal differences in land cover
fractions produced by MESMA are typically represented in
terms of the change of the areal percentage occupied by a
fractional class of land cover within a pixel. However,
landscape metrics operate on the assumption that individual
patches are homogeneous at the patch level. Therefore, before
landscape metrics can be applied, fractional differences have to
be reclassified such that each pixel within any census tract
corresponds to one, and only one, magnitude of land cover
change (i.e. higher increase, lower decrease, etc). To do so,
each individual pixel in the fuzzified layers of change produced
in the previous phase is screened in terms of whether or not a it
meets a threshold of the degree of membership (e.g. 0.7 in the
case study presented herein) in a certain magnitude of change.
If a pixel value (i.e. the degree of membership in a specific
magnitude class) is equal to or greater than this threshold, the
pixel is classified under this magnitude of change. Thus, there
may exist up to five classes of change magnitude (higher
increase, lower increase, no change, lower decrease, and higher
decrease) calculated for each class within any census tract.
The next step is to select a subset of landscape metrics that best
quantifies the ecological patterns of land cover change within
the census tracts in a given study area. The ecological patterns
are quantified in terms of the configuration of patches of pixels
of a given magnitude of change in a given land cover class
within a census tract (i.e. class level metrics). Table 1 shows the
subsets of metrics that have been used in the case study
presented in this paper. As shown in the table, there are metrics
that essentially measure different properties in the same way
and at the same level such as PLADJ and AI. Thus, we should
expect that some of the measures resulting from these metrics
would be highly correlated with each other. This redundancy is
deemed important in the proposed methodology because each
metric points to a slightly different aspect of the spatial
structure of urban places. In the case study presented below, the
calculation of all these metrics was done through a software
505
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
package called FRAGSTATS (version 3), designed to compute
a wide variety of landscape metrics for categorical map
patterns.
Table 1: Description of landscape metrics applied at the
land cover class level within a census tract
: Class Metrics
Metric Property Measured
PD - Patch density Areal composition
LPI - Largest patch index Areal composition
PAFRAC - Perimeter-Area Fractal | Shape complexity
Dimension
ggregation of land cover
PLADJ - Percentage of Like Degree of a
Adjacencies class
AL Indéx of Aggregation Degree of aggregation of land cover
dam class
IJI - Interspersion and Juxtaposition | Degree of interspersion or intermixing
Index of land cover class
DIVISION Diversity of land cover class
Physical connectedness of the land
cover class
COHESION
3. TESTING THE METHODOLOGY IN LOS ANGELES
3.1 Study Area and Data
The study area used to test the proposed methodology is Los
Angeles County, California, a dynamic and data-rich region that
has undergone dramatic changes towards sustainable policies.
In the 1980s, urban planners and policy makers began to
formulate broader policies for sustainability (e.g. the 1989 Air
Quality Management Plan) and implement tangible processes of
technological and procedural change designed to allow cities in
this region to use less energy and materials, to pollute less, and
to create more durable social relationships with nature (Keil and
Desfor, 2003). Nurtured by the region’s strong growth control
movement in residential neighborhoods, Los Angeles’ planning
and policies in the late 1990s began to reflect a leaning towards
vertical growth and urban greenness (Pincetl et al, 2003).
Projects have been conducted to transform small interstitial
spaces into greened open spaces, particularly in parts of the
region that were rated park poor. Although it is too early for
one to assess the degree to which these sustainable policies and
efforts have been successful in such a complex and diverse
region as Los Angeles County, there are indicators that can be
used to assess the progress. In the present case study, the
proposed methodology has been used to extract physical
indicators associated with neighborhood densification in the
regions to quantify the ecological patterns of change associated
with this process.
The data utilized in the application of proposed methodology
included subsets (3113 lines X 4801 samples) from two Landsat
TM and ETM+ images acquired in September 1990 and July
2000 respectively (path 41, row 36). Both images have 0%
cloud cover. In addition to the multispectral images, the case
study utilized a set of 1.0 m spatial resolution aerial photos to
aid in the validation of the resultant endmember fractions.
These photos represented a 1:12 000 color reproduction of high
resolution visible color aerial photography acquired in late 1993
by I. K. Curtis Services, Inc., from an altitude of 2743.2 m
using an RC10 aerial survey camera.
3.2 Results from Applying MESMA
Two individual subsets of image endmembers were selected
independently for two dates, one for each image. These subsets
were chosen according to a modified VIS model: vegetation
(V), impervious surface (1), bare soil (S), and, the modification,
water or shade. The latter endmember type, shade, was used
here as a proxy for building heights based on the assumption