Based on the unique characteristic, the paper currency numbers can be put into record and the automatic identification equipment for paper currency numbers is supplied to currency circulation market in order to provide convenience for financial sectors to trace the fiduciary circulation socially and provide effective supervision on paper currency. Simultaneously it is favorable for identifying forged notes, blacklisting the forged notes numbers and solving the major social problems, such as armor cash carrier robbery, money laundering. For the purpose of recognizing the paper currency numbers, a recognition algorithm based on neural network is presented in the paper. Number lines in original paper currency images can be draw out through image processing, such as image de-noising, skew correction, segmentation, and image normalization. According to the different characteristics between digits and letters in serial number, two kinds of classifiers are designed. With the characteristics of associative memory, optimization-compute and rapid convergence, the Discrete Hopfield Neural Network (DHNN) is utilized to recognize the letters; with the characteristics of simple structure, quick learning and global optimum, the Radial-Basis Function Neural Network (RBFNN) is adopted to identify the digits. Then the final recognition results are obtained by combining the two kinds of recognition results in regular sequence. Through the simulation tests, it is confirmed by simulation results that the recognition algorithm of combination of two kinds of recognition methods has such advantages as high recognition rate and faster recognition simultaneously, which is worthy of broad application prospect.
[1]
Giles M. Foody,et al.
Supervised image classification by MLP and RBF neural networks with and without an exhaustively defined set of classes
,
2004
.
[2]
Wei Guo,et al.
A Modified RBF Neural Network in Pattern Recognition
,
2007,
2007 International Joint Conference on Neural Networks.
[3]
Lorenzo Bruzzone,et al.
A technique for the selection of kernel-function parameters in RBF neural networks for classification of remote-sensing images
,
1999,
IEEE Trans. Geosci. Remote. Sens..
[4]
Hu Xinrong.
An Advanced Segment Algorithm Based on Vehicle Plate
,
2006
.
[5]
Zhu Ming-xing.
Study on the Algorithms of Selecting the Radial Basis Function Center
,
2000
.
[6]
Zheng Shen.
Research on the Letter Identification Method Based on Neural Network
,
2007
.
[7]
R. K. Brouwer.
Training a generalized discrete Hopfield network with fuzzy learning rule
,
1997,
1997 IEEE Pacific Rim Conference on Communications, Computers and Signal Processing, PACRIM. 10 Years Networking the Pacific Rim, 1987-1997.
[8]
N. Otsu.
A threshold selection method from gray level histograms
,
1979
.