International Archives of Photogrammetry and Remote Sensing, Vol. 32, Part 7-4-3 W6, Valladolid, Spain, 3-4 June, 1999
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CLASSIFICATION OF SETTLEMENT STRUCTURES USING MORPHOLOGICAL AND SPECTRAL FEATURES IN
FUSED HIGH RESOLUTION SATELLITE IMAGES (IRS-1C)
Maik Netzband, Gotthard Meinel, Regin Lippold
Institute for Ecological and Regional Development Dresden, Weberplatz 1, D-01217 Dresden,
e-mail: maik.netzband@pop3.tu-dresden.de
KEYWORDS: Image Classification, Human Settlement, High Resolution Satellite Imagery, IRS-1C, Data Merging, Urban and
Regional Development Monitoring.
ABSTRACT
The development of a hierarchical classification scheme is presented which combines spectral and morphological analysis methods.
For an 1RS-1C merge product, a multispectral classification is performed to separate large-area landuse classes, mostly in the urban
fringe, e.g. water, forest and agricultural areas, excavation sites, etc. Areas covered by vegetation can be separated in an exact manner
using the vegetation index NDVI (ratio of red and near infrared channels). Concerning pure settlement areas, a combination of filter
techniques (top-hat and bottom-hat transformations) followed by a thresholding (hysteresis-threshold) in order to identify settlement
structures is presented. Furthermore, a classification of urban structure types (mainly residential areas) by using their morphological
and textural characteristics is developed. For both the precise identification of urban (settlement) areas, as well as the urban structure-
type classification, there is an urgent demand by spatial planning authorities (urban and regional planning).
1. INTRODUCTION
Spatial planning requires information on landuse status in ever
shorter time intervals and higher spatial resolution. This
demand can only be met by using new high resolution satellite
data. The Indian IRS-1C is currently delivering data with a 5-
metre ground resolution; other sensors (IKONOS-2, Orbview 3)
scheduled for 1999 will provide data in the 1-metre resolution
range. The project assesses the suitability of IRS-1C data for
diverse planning requirements, e.g. updating of landuse plans,
municipal survey maps, maps of urban structure types and
biotopes, surface-sealing surveys, and working maps for
landscape planning. It also examines the potential of IRS-1C
data for providing the basis for general data updating at a scale
of 1 : 25,000. This paper focuses on the use of IRS-1C data for
automatic classification in urbanized areas and identification of
settlement structures by combining spectral with morphological
information contained in the panchromatic data.
Multispectral pixel-based classification is basically possible
with the 3-band IRS-1C LISS data but is of limited use in the
very heterogeneous urban areas with high frequent changes of
landuse. In the past, there were no automatic and operational
methods available for urban settlement detection, but only
adaptations from other application fields (like forest or
agricultural monitoring). In addition, no attention was given to
the morphology and spatial pattern of the detected
objects/surfaces in conventional classification methods,
although the spatial pattern is a key dimension of human
settlement analysis and planning. For these reasons, it is
necessary to develop new methods and concepts involving
morphological and textural analysis.
Visual interpretation of morphological grey value distributions
in high resolution, panchromatic data leads to a differentiation
of various objects and structures. In this process, the human
brain analyses many different features, e.g. shape, texture,
location and spatial interrelations of image grey values.
Automatic calculation of these parameters is hard to reach.
Therefore, it is necessary to develop innovative techniques or
use existing tools for analysing the morphology of the grey
value distribution of panchromatic images and integrate them in
hierarchical classification schemes combining the spectral and
the morphological information of panchromatic images.
2. STATE OF THE ART
Due to the improved geometric resolution of new satellite-based
sensors, the analysis of built-up or more general of settlement
areas (depending on the different monitoring scales and on task
definition, e.g. the analysis can involve the identification of
single objects or whole settlement areas of towns and villages)
is faced with new challenges, which can not be solved only by
utilizing conventional multispectral classification. For this
reason, several current research efforts - from different points
of view - try to develop new strategies for very heterogeneous
and rapidly changing urban and suburban areas.
From the photogrammetric point of view, an overview of the
present research activities to identify man-made objects mainly
in airborne data is given by Grim et al. (1997). Fewer efforts are
undertaken up till now to investigate the potential use of new
high resolution satellite data. Presently, only IRS-1C is
delivering high resolution data (5,8 m in the panchromatic
modus). With this resolution, it is not possible to detect single
objects (buildings, roads, etc.), large size buildings excluded.
On the other hand, it has to be verified whether the IRS-1C data
are suitable for outlining connected settlement areas, i.e. for