Generalized texture models for detecting high-level structures in remotely sensed images
Author(s)
Advisor
Aksoy, SelimDate
2007Publisher
Bilkent University
Language
English
Type
ThesisItem Usage Stats
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Abstract
With the rapid increase in the amount and resolution of remotely sensed image
data, automatic extraction and classification of information obtained from such
images have been an important problem in the field of pattern recognition since
remotely sensed imagery is a critical resource for diverse fields such as urban land
use monitoring and management, GIS and mapping, environmental change and
agricultural and ecological studies. This thesis proposes statistical and structural
texture models for detecting high-level structures in remotely sensed images. The
high-level structures correspond to complex geospatial objects with characteristic
spatial layouts in a region. As opposed to the existing approaches that are
based on classifying images using pixel level methods, we propose to use simple
geospatial objects as textural primitives and exploit their spatial patterns. This
representation can be viewed as a “generalized texture” measure where the image
elements of interest are urban primitives instead of the traditional case of pixels.
The spatial patterns we are interested in correspond to the regular and irregular
arrangements of these primitives within neighborhoods.
The methodology we propose in this thesis has two steps. First, the primitives
of interest are detected using spectral, textural and morphological features with
one-class classifiers. Then, the spatial patterns of these primitives are modeled.
At this step, either a statistical or a structural approach can be followed. In
the statistical approach, analysis of the spatial arrangement of the primitives is
done by co-occurrence-based spatial domain features and Fourier spectrum-based
frequency domain features. These features are used to quantify the likelihood of
presence of the focused object in the image region being analyzed. In the structural
approach, a graph-theoretic representation is proposed where the primitives
form the nodes of a graph and the neighborhood information is obtained through
Voronoi tessellation of the image scene. Next, the graph is clustered by thresholding
its minimum spanning tree and the resulting clusters are classified as regular
or irregular by examining the distributions of the angles between neighboring
nodes.
The algorithms proposed in this thesis are illustrated with the detection of two
geospatial objects: settlement areas and harbors. The first step in the modeling
of these objects is the detection of primitives such as buildings for settlement
areas, and boats and water for harbors. In the second step, both statistical
and structural approaches are illustrated for the modeling of the spatial patterns
of these objects. Results of the experiments on high-resolution Ikonos satellite
imagery and DOQQ aerial imagery show that the proposed techniques can be
used for detecting the presence of geospatial objects in large remote sensing image
datasets.
Keywords
Pattern recognitionOne-class classification
Geospatial object detection
Co-occurrence texture analysis
Fourier texture analysis
Graph-based texture analysis