levi-
) 22
| of
(fig.
be
CCU-
fica-
noto
dif-
con-
n at
idth
om-
arror
with
ı 20
y is
the
ints
nust
9no-
liffi-
s of
are
reo-
nigh
and
reo-
SOr-
d in
| of
ould
lyti-
st a
in is
ints
lies
‘hen
Jata
hen
osi-
| for
has
ing,
Fa-
iulp-
esia
peri-
ereo
ings
AUTOMATIC FEATURE EXTRACTION FOR MAP REVISION
Dr. Hiroshi MURAKAMI
Deputy Director
International Affairs Division
Ministry of Construction, JAPAN
and
Dr. Roy WELCH
Director
Center for Remote Sensing and Mapping Science
University of Georgia
Commission IV
ABSTRACT:
Automatic feature extraction techniques were developed for use with digital images and map
data to assess the feasibility of employing expert systems for map revision. The map and
image data were placed in register to create a cartographic database suitable for use with
a prototype expert system optimized for the extraction of building features. The expert
system approach permitted control of image processing routines applied to the cartographic
database for feature extraction. The accuracy of feature extraction increased as the image
pixel resolution was improved.
KEY WORDS: Cartographic Database, Change Detection, Expert System, Feature Extraction,
Image Processing, Map Revision.
1. INTRODUCTION
Most developed countries have completed
national mapping programs that provide
topographic map coverage at scales of
1:25,000 or smaller, and map revision is
now the main task. Urban expansion,
however, causes maps to become out-dated
rapidly, while funds allocated to mapping
have been reduced. Consequently, there is a
need for more efficient and cost effective
methods for labor-intensive map revision
tasks, particularly for change detection,
in which differences between newly acquired
images and old maps are determined.
Feature extraction studies have mainly
focused on objects such as roads and
buildings included in a digital image
(Bajcsy and Tavakoli, 1976; Nagao and
Matsuyama, 1980; Nevatia and Babu, 1980;
Fischler et al., 1981; McKeown .et al.,
1985; Huertas and Nevatia, 1988; Wang and
Newkirk, 1988).
The objective of this study was to develop
a method of detecting changes of buildings
in SPOT images. Since change detection
method needs the photo interpreters’
knowledge to identify each detected change,
expert system approach was employed to deal
with human expertise (Murakami, 1990).
2. ISSUES IN FEATURE EXTRACTION
This study focused on the following three
important points out of the problems
encountered in feature extraction (Nagao
and Matsuyama, 1980; Hanson and Riseman,
1988; Matsuyama and Hwang, 1990).
2.1 Initial Parameter Value Selection in
Image Segmentation
Computers can not reliably extract specific
objects directly from gray-scale images.
Consequently, the original gray-scale image
must be transformed [irst to an image in
which each ground feature is independently
569
labeled. In image segmentation, initial
parameters (e.g., threshold values) must be
employed to distinguish ground features
from their background. Appropriate
threshold values, however, may differ from
feature to feature - even in a single
image. Consequently, developing a method to
select appropriate threshold values in an a
priori manner will be required.
2.2 Extraction of Descriptor Values
Interpretation of individual labeled
regions requires descriptors of the
characteristics of each ground feature.
Most descriptors are related to the seven
elements of photo interpretation, i.e.,
tone, shadow, pattern, size, texture,
shape, and association (Paine, 1981;
Lillesand and Kiefer, 1987). In theory,
extraction and proper processing of all the
information concerning these elements would
provide the same understanding of the input
image as human interpreters. Hence,
selection of the most important elements
for a particular kind of features, i.e.,
building, will be necessary.
Consequently, there must be a procedure for
establishing values for descriptors related
to each of the interpretation elements. Of
course, it must be understood that "human
perception' does not necessarily correspond
with "machine perception".
2.3 Uncertainty Management and Inference
Method
Some uncertainty is associated with
descriptor values derived from segmented
regions. Thus, knowledge or guiding rules
must be applied to establish the identity
of each object. Unfortunately, these rules
may also contain some uncertainty. For
example, "A bright, elongated object (20 m
x 40 m) in a satellite image is a
building," may be true in most instances.
However, a road or agricultural field may
exhibit similar characteristics. Hence,