738
be obtained. The Taylor method is sensitive to radiometric cali- cognil
bration errors and quantization effects, especially for water-type
discriminations. The results, however, for agricultural and forest
scenes demonstrate that this method will be useful for photointer- of Pu]
pretation of these regions. omatec
grams
run oi
AUTOMATED CLASSIFICATION SYSTEMS Most (
algor:
Software Systems: There has been a burgeoning development (Craii
in Canada of software systems for automated classification of MSS systei
data on CCT's. Within the federal government research on automated requi:
classification has been carried out by the Department of the Envir- catioi
onment (Forest Management Institute, Marine Sciences Directorate, that 1
and Canada Centre for Inland Waters), the Department of National ERTS :
Defence (Defence Research Board), the Department of Agriculture, and the Lj
the Department of Energy, Mines, and Resources (Canada Centre for j_ n g a <
Remote Sensing). Industrially, three Canadian firms are known by
the authors to have experience in building automated classification
systems: Computing Devices Company, Ross and Associates, and 0VAAC8. Canad<
University scientists who are concentrating on automated classifi- compli
cation as applied to ERTS imagery include: A. Wacker (University of reasoi
Saskatchewan), H.D. Steiner (University of Waterloo), J. Munday given
(University of Toronto), G. Rochon (Laval University), E. Langham train:
(University of Quebec) and W. Davis (University of Alberta). It is data ;
impractical to attempt to describe each contribution these many selec
investigators have made to the development of automated analysis of tures
ERTS imagery. We, instead, will briefly describe two large software j_ n g Q;
systems, MICA, developed and used at CCRS, and LARSYS, developed at poneni
Purdue University and used by Wacker at the University of Saskatchewan. theme:
These two systems are representative of the automated classification can ] D(
work being carried out in Canada. Tempo:
Resul-
The MICA (Modular Interactive Classification Analyzer) class:
system (Goodenough et a_l 1974) consists of a collection of interact- ved.
ive programs written in Fortran and assembler languages for operation catioi
on a PDP-10 with color display, plotter, and electron beam image image
recorder devices (EBIR). The most important functions of the MICA
system are listed in Table II.
are p:
At CCRS all disk image files and non-image data files are cessii
in standardized formats to facilitate user and the MICA system book- press«
keeping. It is thus possible for a user of MICA to examine or modify the h:
at any time the spectral signature of a class. This is useful if terns :
one is attempting to determine the nature of the data which prevent to acl
certain class discriminations. The MICA system is very fast because
use is made of the fact that a typical ERTS frame contains only 6000
independent intensity vectors (Shlien and Goodenough 1974). A look
up scheme is employed to speed classification, yet at the same time
permits one to easily change the classification algorithm. The MICA
system is a general purpose multispectral analyzer for pattern re-