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A COMPARISON OF SEGMENTATION PROGRAMS FOR HIGH RESOLUTION
REMOTE SENSING DATA
G. Meinel, M. Neubert
Leibniz Institute of Ecological and Regional Development (IOER), Weberplatz 1, D-01217 Dresden, Germany -
G.Meinel@ioer.de, M.Neubert@ioer.de
PS ThS9: Uncertainty, Consistency and Accuracy of Data and Imagery
KEY WORDS: Automation, Land cover, Classification, Software, IKONOS, Performance, Comparison, qualitative
ABSTRACT:
Methods of image segmentation become more and more important in the field of remote sensing image analysis — in particular due
to the increasing spatial resolution of imagery. The most important factor for using segmentation techniques is segmentation quality.
Thus, a method for evaluating segmentation quality is presented
and used to compare results of presently available segmentation
programs. Firstly, an overview of the software used is given. Moreover the quality of the individual segmentation results is evaluated
based on pan-sharpened multi-spectral IKONOS data. This is done by visual comparison, which is supplemented by a detailed
investigation using visual interpreted reference areas. Geometrical segment properties are in the focus of this quantitative evaluation.
The results are assessed and discussed. They show the suitability of the tested programs for segmenting very high resolution
imagery.
1. INTRODUCTION
Segmentation means the grouping of neighbouring pixels into
regions (or segments) based on similarity criteria (digital
number, texture). Image objects in remotely sensed imagery are
often homogenous and can be delineated by segmentation.
Thus, the number of elements as a basis for a following image
classification is enormously reduced. The quality of
classification is directly affected by segmentation quality.
Hence quality assessment of segmentation is in the focus of this
evaluation of different presently available segmentation
software.
Despite some early research activities (e.g. Kettig & Landgrebe,
1976), image segmentation was established late in the field of
remote sensing. First beginning with the availability of very
high resolution imagery (< 1 m) and their characteristics (high
level of detail, spectral variance etc.) this method has become
popular as a common variant of data interpretation.
Recent investigations have shown that a pixel-based analysis of
such high resolution imagery has explicit limits. Using
Scgmentation techniques some problems of pixel-based image
analysis could be overcome (e.g. Meinel, Neubert & Reder,
2001).
This paper is not related to more mathematical surveys of
Segmentation, like Haralick & Shapiro (1985) or Pal & Pal
(1993). It is rather a more application-oriented comparison
based on real remote sensing data.
Among Segmentation software there is a growing number of
feature extraction programs. In contrast they do not
fractionalise the whole image but rather select specific objects
from imagery. APEX (PCI Geomatics), FeatureXTR (Hitachi
Software Global Technology) or Feature Analyst (Visual
Learning Systems) belonging to this group of tools, which are
Not considered herein,
2. EVALUATED SEGMENTATION SOFTWARE
Recently there exists a multitude of implemented segmentation
algorithms for remote sensing tasks, partially having very
different characteristics. Only some of them are available
commercially. Often they are developed by research institutions
or universities. For evaluating capabilities of different
algorithms the following programs were compared:
e eCognition 2.1 resp. 3.0 (Definiens Imaging GmbH,
Munich, Germany);
* Data Dissection Tools (INCITE, Stirling University,
UK);
e CAESAR 3.1 (N.A.Software Ltd., Liverpool, UK)
® InfoPACK 1.0 (InfoSAR Ltd., Liverpool, UK);
e Image segmentation for Erdas Imagine (USDA Forest
Service, Remote Sensing Applications Center, Salt
Lake City, USA);
e Minimum Entropy Approach to Adaptive Image
Polygonization (University of Bonn, Institute of
computer science, Bonn, Germany);
e SPRING 4.0 (National Institute for Space Research,
Säo José dos Campos, Brasilia).
All programs are described in brief in table 1. The choice of
approaches was based on the software segmentation suitability
for remote sensing imagery. On the other hand cooperativeness
of the developers was a precondition for this survey.
3. METHOD
3.1 Used imagery
Pan-sharpened multi-spectral IKONOS data (I m ground
resolution, principle component algorithm) of two test areas
were segmented by the software above. Each test area has a size
of about 2000 by 2000 Pixel, representing an urban and a rural
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