Efficient multi-currency classification of CIS banknotes

In this paper, we propose a fast and efficient algorithm to classify multi-national banknote images using size information and multi-template correlation matching. Since different banknotes have different sizes, this information was considered to be an important characteristic. Using the size information, we generated a size map to group the banknotes. Then, we determined the discriminant areas of each banknote that have high correlations among the same kind of banknote and low correlations with different kinds of banknotes. Post-processing was applied to handle degradations such as writing, aging, etc. The algorithm was tested using 55 banknotes of 30 different denominations from five countries: KRW, USD, EUR, CNY, and RUB. The experimental results showed 100% classification accuracy for unsoiled banknotes and 99.8% classification accuracy for soiled banknotes. The average processing time was about 4.83ms per banknote.

[1]  Shang-Hong Lai,et al.  Fast Template Matching Based on Normalized Cross Correlation With Adaptive Multilevel Winner Update , 2008, IEEE Transactions on Image Processing.

[2]  Kazuyuki Murase,et al.  A Paper Currency Recognition System Using Negatively Correlated Neural Network Ensemble , 2010, J. Multim..

[3]  HassanpourHamid,et al.  Using Hidden Markov Models for paper currency recognition , 2009 .

[4]  Jongseok Lee,et al.  Feature Extraction for Bank Note Classification Using Wavelet Transform , 2006, 18th International Conference on Pattern Recognition (ICPR'06).

[5]  Chulhee Lee,et al.  Fast Country Classification of Banknotes , 2013, 2013 4th International Conference on Intelligent Systems, Modelling and Simulation.

[6]  Sigeru Omatu,et al.  A reliable method for classification of bank notes using artificial neural networks , 2004, Artificial Life and Robotics.

[7]  Hamid Hassanpour,et al.  Using Hidden Markov Models for paper currency recognition , 2009, Expert Syst. Appl..

[8]  Aoba Masato,et al.  Euro Banknote Recognition System Using a Three - layered Perceptron and RBF Networks , 2003 .

[9]  Farid García,et al.  Recognition of Mexican banknotes via their color and texture features , 2012, Expert Syst. Appl..

[10]  Jae-Kang Lee,et al.  Distinctive Point Extraction and Recognition Algorithm for Various Kinds of Euro Banknotes , 2004 .

[11]  Derek Bradley,et al.  Adaptive Thresholding using the Integral Image , 2007, J. Graph. Tools.

[12]  Fumiaki Takeda,et al.  Thai Banknote Recognition Using Neural Network and Continues Learning by DSP Unit , 2003, KES.

[13]  D. A. K. S. Gunaratna,et al.  ANN Based Currency Recognition System using Compressed Gray Scale and Application for Sri Lankan Currency Notes - SLCRec , 2008 .