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QUANTIFYING THE ECOLOGICAL PATTERNS OF URBAN DENSIFICATION
THROUGH MULTIPLE ENDMEMBER SPECTRAL MIXTURE ANALYSIS,
LANDSCAPE METRICS, AND FUZZY LOGIC
WG VII/4 Human Settlement and Impact analysis
T. Rashed
Department of Geography, University of Oklahoma, Sarkeys Energy Center 680, Norman, OK 73019, USA -- rashed@ou.edu
KEY WORDS: Sustainability, Urban Change, MESMA, Fuzzy Logic, Landscape Metrics, Los Angeles
ABSTRACT:
This paper introduces an integrative methodology that has been developed to measure temporal changes in urban morphology based
on the techniques of multiple endmember spectral mixture analysis (MESMA), landscape metrics, and fuzzy logic. In order to
illustrate an application of the methodology, the paper uses two satellite images acquired in 1990 and 2000 for the metropolitan area
of Los Angeles County, California, a megacity with complex morphological patterns that are rapidly changing due to a range of
complex, interrelated forces of urbanization that are poorly understood. Through a wall-to-wall exercise, the paper discusses: (1)
how the spatially continuous character of urban morphology in Los Angeles has been analyzed through the MESMA technique to
capture and quantify within-class changes at the sub-pixel level; (2) how the magnitudes of changes have been assessed through
fuzzy logic; and (3) how landscape metrics have been applied to quantify the ecological patterns of change at the census tract level.
1. INTRODUCTION
1.1 Background
Satellite remote sensing has been widely recognized as one of
the essential technological tools for sustainable development. A
considerable number of recent studies has been conducted
utilizing satellite sensor data in the analysis of urban change
(e.g. Kwarteng and Chavez, 1998; Costa and Cintra, 1999;
Chen et al., 2000; Ward et al., 2000; Batty and Howes, 2001;
Madhavan et al., 2001; Yang and Lo, 2002; Herold et al., 2003;
Weber and Puissant, 2003; Rashed et al., 2004). The findings of
these studies have enriched our understanding of the physical
and socioeconomic drivers of changes in urban land cover and
the implications of these changes on land use practices and
resource management in cities. Some of these studies went
further beyond the characterization of change and its causes and
attempted to integrate remotely sensed data with models of
urban growth in order to project future changes in a given city.
Looking back at how these studies have informed and been
linked to sustainability policies, one can easily observe the sole
focus on only one type of sustainable development, the so-
called “smart growth,” “managed growth,” or “new urbanism.”
These and other similar approaches direct attention to changes
that occur at the urban fringe, as in the case of “edge cities” in
the U.S. and decentralized suburban communities in Europe.
However, few studies have directed attention to another
important mode of urban land cover and land use change taking
place within existing landscapes in cities (Rashed et al., 2004).
Urban landscapes change over time as new urban fabric is
added and also as the existing fabric is internally modified (e.g.
new buildings replace old ones, plots are amalgamated or
subdivided, street layouts are modified) (Knox, 1995;
Cadwallader, 1996). These patterns of urban densification and
internal modifications are of major concern to sustainable
development because they represent the physical manifestation
of a range of social, economic, cultural, and political
dimensions associated with urban dynamics. Moreover,
densification typically takes place locally within urban
neighborhoods where the impact of sustainable policies is more
spatially and socially manifested. Hence, a better
characterization and quantification of densification patterns at
the local level will both provide a rich understanding of the
processes involved and challenge the credibility of policy,
citizens’ preferences for sustainable living space, and
503
developers’ understanding of and attitude towards those
preferences (Webster and Senior, 1999).
This paper introduces a methodology for quantifying the
ecological patterns of urban densification taking place at the
local or microscale level based on satellite imagery. The
suggested methodology builds on a rigorous framework of
urban landscape ecology (Ridd, 1995) and integrates the
techniques of multiple endmember spectral mixture analysis
(MESMA), landscape metrics, and fuzzy logic. The proposed
methodology brings these techniques together in a way that
allows for: (1) a better decomposition of the urban landscape
into its underlying land cover materials; (2) an improved
assessment of urban land cover change that takes into account
not only changes between land cover classes but also within
land cover classes, and quantifies the actual magnitude of this
change (e.g. high increase, lower decrease, no change, etc); and
(3) a quantitative comparison of the ecological patterns of
change in land cover between urban locales. In the following
sections, the proposed methodology is described and its
application is demonstrated through a case study that utilized
Landsat data to quantify urban land cover change in Los
Angeles County, California, between 1990 and 2000.
2. METHODS
2.1 Approach
The proposed methodology for quantifying the ecological
patterns of urban densification consists of three sequential
phases. In the first phase, the MESMA technique is separately
applied to individual images in order to derive per-pixel
physical measures of urban land cover abundance at a given
point of time. Land cover fractions of individual dates are then
validated against test data to determine the accuracy of
MESMA-derived measures. Once acceptable, multi-date
fractions of corresponding land cover materials are used to
calculate per-pixel temporal differences in these fractions.
Hence, the resultant fractional differences will represent a direct
measure of the changes that take place in the composition of
urban morphological patterns over time due to such processes
as urban densification and urban sprawl. In the second phase of
the methodology, the magnitude of change in land cover
fractions is estimated through fuzzy logic. A number of
predefined fuzzy membership functions are applied to
characterize the magnitude of change in each type of urban land
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