5 CONCLUSIONS
In this paper we have proposed an idea of a new
approach to recognition of fuzzy patterns
represented by graphs. The problem has been
considered in the context of pattern recognition and
scene analysis with references to robotics (Han and
Han, 1999; Kok et al., 2005; Muratet et al., 2004;
Petterson, 2005) and applications in medicine
(Tadeusiewicz and Ogiela, 2005, Ogiela et al.,
2006). To take into account variations of a fuzzy
pattern under study, a description of the analysed
pattern based on fuzzy sets of the first order was
introduced. The fuzzy IE graph has been proposed
here for such a description. The idea of an efficient,
that is with the computational complexity O(n
2
),
parsing algorithm presented in (Flasiński, 1993) is
extended, so that fuzzy patterns, represented by fuzzy
IE graphs, can be recognized. In the algorithm a T-
norm is used for calculation of value of membership
measure of output graphs. Such solution makes that
the algorithm is very flexible. In particular if
arithmetic product is used as a T-norm, the
algorithm is the same as the random one described in
(Skomorowski, 1998).
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