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The Laboratory for Application of Remote Sensing (LARS)
of Purdue University is well known for its excellent research on aut
omated classification systems. Dr. Wacker developed a number of pro
grams for the LARSYS system. He has modified the LARSYS system to
run on an IBM 370/155 computer at the University of Saskatchewan.
Most of the LARSYS system is written in Fortran. New programs and
algorithms can easily be added. Presently available system functions
(Crain 1974) are given in Table III. The advantages of the LARSYS
system are its flexibility and its power as a research system. LARSYS
requires a sophisticated user, knowledgeable in automated classifi
cation methodology. The Fortran flexibility of the system means
that the LARSYS programs are quire slow for classification of an
ERTS frame. Crosson, Peet and Wacker (1974) have successfully used
the LARSYS system to carry out classification of agricultural fields
in Saskatchewan.
Hardware Systems : The most developed hardware system in
Canada is the CCRS Image 100 system. The Image 100 is intended to
complement the photointerpretative powers of the users. For that
reason the system is highly interactive. The system functions are
given in Table IV. One can classify one ERTS-1 frame, including
training time, in approximately eight hours. Digital multispectral
data are loaded from tapes into a solid state memory unit. The user
selects a training area and the resulting classification and signa
tures are displayed in four seconds. Preprocessing, such as ratio-
ing or normalization, and transformations, such as Hadamard or com
ponents analysis, may be performed in near real-time. Up to eight
themes may be classified at one time. The resulting classifications
can be stored on magnetic tape for film production on the CCRS EBIR's.
Temporal data can be combined to increase classification accuracy.
Results on a variety of terrain (Economy et_ ad 19 74) indicate that
classification accuracies of greater than 80% can be routinely achie
ved. Although the design of the system favors supervised classifi
cation techniques, one can also carry out clustering analysis of the
image.
Two industrial firms, Computing Devices Company and OVAAC8,
are presently developing hardware interactive systems for image pro
cessing. Although a number of university investigators have ex
pressed interest in such hardware based classification systems,
the high capital costs have prevented the development of such sys
tems in those institutions which do not have the processing demands
to achieve the large savings possible through economies of scale.