For the pattern classification problems the neuro-pattern recognition which is the pattern recognition based on the neural network approach has been paid an attention since it can classify various patterns like human beings. In this paper, we adopt the learning vector quantization(LVQ) method to classify the various money. The reasons to use the LVQ are that it can process the unsupervised classification and treat many input data with small computational burdens. We will construct the LVQ network to classify the Italian Liras. Compared with a conventional pattern matching technique, which has been adopted as a classification method, the proposed method has shown excellent classification results.
[1]
Paul W. Munro.
Neural Network Architectures: An Introduction, Judith Dayhoff. Van Nostrand Reinhold, Boston, MA (1990), $38.95, 259 pp, ISBN: 0-442-20744-1
,
1992
.
[2]
Teuvo Kohonen,et al.
Self-Organizing Maps
,
2010
.
[3]
Sigeru Omatu,et al.
Bill money classification by competitive learning
,
1999,
SMCia/99 Proceedings of the 1999 IEEE Midnight - Sun Workshop on Soft Computing Methods in Industrial Applications (Cat. No.99EX269).
[4]
Toshihisa Kosaka,et al.
Bill Money Classification of Japanese Yen Using Time Series Data
,
1995
.