Classification of Banded Chromosomes using Error-Correcting Grammatical Inference (ECGI) and Multilayer Perceptron (MLP)
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چکیده
The application of two general-purpose Pattern Recognition techniques (a Syntactic approach, Error Correcting Grammatical Inference, and a Geometric approach, Multilayer Percptron) to unidimensionally coded human chromosome recognition is considered in this paper. The results obtained with both techniques are comparable or better than previous results obtained by other authors with the very same data using methods specifically designed for this application.
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