1015
Symposium on Remote Sensing for Resources Development and Environmental Management/Enschede/August 1986
© 1987Balkema, Rotterdam. ISBN 90 6191 674 7
The integration of remote sensing and geographic information
systems
David G.Goodenough
Canada Centre for Remote Sensing, Department of Energy, Mines & Resources, Ottawa
ABSTRACT: The integration of remote sensing and geographic information systems is essential for effective
resource management. The volume of remote sensing imagery for managing a provincial resource, such as
forestry, is such that one must use digital image analysis systems. By combining remote sensing image
analysis and geographic information systems, resource managers can have timely and accurate knowledge of a
renewable resource. There are, however, several scientific and technical problems that reduce the success of
this integration.
This paper describes several integration problems and the LANDSAT Digital Image Analysis System (LDIAS)
used at the Canada Centre for Remote Sensing (CCRS). Experiments have been conducted integrating a forestry
geographic information system for the province of British Columbia with LDIAS. Some of the difficulties
encountered require the use of non-algorithmic solutions which use symbolic reasoning. A brief description of
expert systems for this integration is given. Several key issues for the future are raised for consideration.
1 INTRODUCTION
1.1 Basic Concepts
A geographic information system (GIS) is a data base
system for manipulating digital spatial and thematic
data. Increasingly, such systems are being used in
developed countries to aid in resource management
and computer-assisted mapping. A GIS has four
components (Marble et al 1984): a data input
subsystem, a data storage and retrieval subsystem, a
data manipulation and analysis subsystem, and a data
reporting subsystem. The data inputs are usually
spatial and thematic data derived from a combination
of existing maps, aerial photographs, and manual
interpretations of remotely sensed imagery. With
the data manipulation and analysis subsystem, the
user can define spatial procedures to generate
derived information, such as the best location
economically to harvest a resource, such as timber.
The data reporting subsystem is used to generate
reports in tabular form, digital displays, or maps.
Because the input data on which a GIS is based
becomes obsolete quickly, it is essential to update
periodically the GIS with new spatial and thematic
data. Remote sensing is often the most cost
effective source for these updates.
The information content from large quantities of
remotely sensed images, such as those derived from
LANDSAT and SPOT satellites, is best extracted using
computer systems designed for this purpose. Such a
system is called an Image Analysis System (IAS). An
IAS has five elements: data acquisition,
preprocessing, analysis, accuracy assessment, and
information distribution. The usual input for a
remote sensing IAS is a computer compatible tape
containing a digital image acquired at a remote
sensing, satellite tracking station. For some
agencies, corrections for sensor-related radiometric
and geometric errors will have been performed at the
tracking station. However, the preprocessing
subsystem in an IAS usually can perform additional
radiometric, geometric, and atmospheric corrections.
These specialized corrections, not normally provided
by image production systems, include: corrections
for radiometric distortions due to view angle,
geometric compensation for terrain relief,
projection of imagery to a variety of map projec
tions, and refined atmospheric corrections with the
aid of meteorological information. The result is to
give an image as free from errors as possible. This
preprocessed image is then used for training and
classification. In a system integrating GIS and IAS
one could use the GIS thematic data and attributes
to guide the selection of suitable training areas.
Often the thematic polygons in a GIS contain several
spectral and spatial classes. It may be necessary,
therefore, for the user to have manual control of
the selection of training areas. After classifi
cation, the accuracy is assessed using theoretical
estimation based on class statistics or selected
test sites derived from ground reference informa
tion, or both. The derived information can be dis
tributed in the form of tables, maps, computer
tapes, or images. The LANDSAT Digital Image
Analysis System (LDIAS) of CCRS includes all of
these image analysis functions plus the GIS compo
nents described above.
1.2 Integration of Remote Sensing and Geocoded Data
Figure 1 is a pictorial example of the integration
of remote sensing with other geocoded data. Stored
in raster or grid form, one has the LANDSAT and
aircraft sensor data, digitized aerial photography,
and topography. Thematic data are represented by
layers or levels of polygons corresponding to a
given theme or class. Finally, one has point data
corresponding to meteorological measurements. This
figure shows that the integration of GIS and IAS
must deal with different data representations and
must provide geometric correspondence or registra
tion between the different data sets.
There are two approaches that one might take to
integrating a forestry GIS and remote sensing. To
simplify the data representation and labelling, one
could develop a new GIS having the same raster
structure as the image data with classes compatible
with those detected spectrally. Given that one
LANDSAT Thematic Mapper (TM) image is more than 400
megabytes, this raster-based unification could lead