3. Istanbul 2004
illding | Road |
FA
0
|
iie Ho pisi
380 75
RU
0 100
Yo 89%
|
hod)
rtificial immune
ge classification
ich is a basis of
on between the
assifier and our
num likelihood
iting Vegetation
s show that the
1 classification
n algorithm and
ation.
ms and Their
r In; Bell GJ,
munology, New
ory of Acquired
ng an artificial
ter Application,
odel for pattern
ierican Medical
tificial immune
143-150.
ificial Immune
, Tech. Rep-RT
impinas.
ficial Immune
hnical Report —
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004
L.N.De Castro, F. .J. Von zuben.,2000b. Clonal selection
algorithm with engineering applications. In! ‘Proc GECCO's
00 ‘Nevada USA! pp.36—37
L N De Casiro, F. J Von zuben., 2002. Learning and
optimization using the Clonal Selection Principle. /EEE.
N. K. Jerne., 1973. The Immune System. Scientific American,
229(1) , pp.52-60.