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The knowledge base of the system consists of two
main parts :
| - facts about the status of the world model -> GIS. -
procedures for feature extraction / parameter estim-
ation. - procedures for predicting future states.
Il - rules for the selection of procedures for feature
extraction. - rules for updating the model, given
data(source).
Efficiency of hypothesis evaluation is needed because
with higher resolution (including digitized photos) and
an increasing number of sources the volume of data
increases more rapidly that the volume of information.
Efficiency can be achieved through the top down,
backward chaining of rule by gathering the statistics of
the degree of change of probability from prior to
posterior as a function of {class , feature -> source}. If
for a certain class a certain feature does not signifi-
cantly change the likelihood for that class then there is
no need to evaluate P(Class|feature) for that combin-
ation in future. This is also the case if for an object the
P(Class) is so low that it is very unlikely to lead to a
significant P(Class|f).
P.M. : Bayes , P(CI|f)xP(f)-P(fÍ|CI)xP(CI) , P(f[|CI) would
have to be very high to compensate for a low P(CI).
5 Concluding remarks .
Most of the present publications on the subject of
using multisource data is at a pre scientific level of
picture processing. One of the more favoured painting
receipes is to play with the IHS transform. Another
favourite is to throw data of different sources and
hence incompatible physical dimension together into a
principal components analysis. This disregards not
only the incompatibility of the physical units but also
the restriction of linear transforms to additive vector
models.
Discussion with experts in visual image interpretation
who have looked at e.g. SPOT+SAR -> HSI pictures
does not provide more representable knowledge than
can be derived from physical modelling. The useful
knowledge of interpretation experts is in the field of
context dependent prior probabilities related to comp-
lex spatial relations or to complex processes involving
901
human activies such as destroying the environment.
Their expertise is best used in defining sensible
hypotheses about object's states and about processes
and the relation between priors and context.
Progress in computer assisted image analysis is most
rapid in those areas where models can be defined for
the relationship between object class, model parameters
and data(source). Examples are model based analysis
of buildings [Schutte,1992] and plants in digitized aerial
photos, the use of vegetation indices and (DEM) model
based analysis of SAR radar [Woodhouse, 1990].
Backward chaining of classification and parameter
estimation rules allows efficient handling of missing
data, and the omission of data which is not relevant to
the evaluation of a current hypothesis.
The GIS which is used to contain the world model must
have the possibility to store the relevant P(class)
vectors as these are required for a multi source
updation of the model of the world.
The combination of Bayes and Markov relations can be
used to estimate states of the system as a function of
time.
The above formulated meta rules have resulted in a
research agenda at ITC aimed at model based image
analysis, in cooperation with the University of Twente.
Research into a GIS with likelihoods is executed in
cooperation with the Rijks Universiteit of Utrecht (the
Camotius project).
The definition of the relationship {class , parameter,
data(source)} is central in the treatment of data from
various sources. The knowledge base with rules for the
relation Class -> image processing procedure, is under
construction in a PhD project [Fang,1992]. Rules for
Class , parameters, data(source) -> feature extraction
‚will have to be added (in the problem analysis part).