The boundary transformation from the local coordinate systan
to the corresponding line and column number of the landsat subsence,
is performed by the programme which will make an affine transforma-
tion.
3/ Data from a mask which represents training areas by means
of different thematic codes.
B. The histogramme and the symbol coded picture of the training
area. The programme can display them either on the terminal
Screen or on the line-printer.
C. When given thresholds, the pixels, with digital levels excee-
ding the thresholds, are deleted from the symbolic picture
and will not be included in the calculation of the statistics
of the training area.
D. Calculating statistical values as averages, standard devia-
tions, covarience matrices and correlation matrices of the
training areas.
At last, the programme will give the user the possibility to
combine the statistical values of the training arcas extracted
from either optional files or the terminal, and to delete some
statistical values which the user does not require. :
the user can store all the statistical values of the training
areas onto a disk file.
5. Supervised Classification
Classification is based on various supervised classification
techniques that require refrence signatures of targets represented
by training areas on the ground.
The EPDCS system provides the user with three different Super-
vised classificution methods-maximum likelihood classification,
minimum distance classification and table look-up classification.
A user can select different training areas, channels and thresholds
for the classification, using data stored on the same file. The
classified image on the paper with a symbolic code representing
different classes are produced by line-printer. Classified colour
or black-white image on the film will be produced by rotating drum
recorder.
6. Un-Supervised classification
The supervised technique is associated with high variability of
spectral signatures. When so, it is difficult to set up an opera-
tional library of refenence signatures. You have to obtain the re-
ference signatures directly from training areas. Even in this prac-
tice, the training areas selected by the user are not objective. The
unsupervised classification method avoids the above mentioned diffi-
culty by not requiring the reference signatures in the data proces-
ing phase. After the data processing the identification is done by
pixelwise testing of the class assignment. The EPDCS system has
three programmes for unsupervised classification. The first cluster-
ing algorithm is used to group pixels with similar spectral charac-
teristics. The second clustering algorithm is used to group pixels
by means of the local textural parameter which was proposed by H.
BEGUIN, H,Do TU and J. WILMET. The third algorithm also consists in
combining spectral information with spatial information. Firstly the
image is separated into the "small regions", pixels of which must
be neighbours and must have very similar spectral values. Then, the
unsupervised classification based on the "small regions" is per-
formed according to spectral mean value and deviation of the regions
he re
vised clas
Spectral |
having sin
ers from %
formation
is more us
assignment
processing
within an
sent diffe
8. Accurao
In ord
truth, we
and map by
7. Ciscanin
m
"ing paramo
Kk * Dif
The ma
fied, by m
which have
bols repre
B. Con
The ta
es.
C. Ovo
D. Map
B. Ove
' ACKNOW]
I am v
Mr, Gôran ;
University
ideas and