Handwritten Character Recognition Using Multiscale Neural Network Training Technique
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 33093
Handwritten Character Recognition Using Multiscale Neural Network Training Technique

Authors: Velappa Ganapathy, Kok Leong Liew

Abstract:

Advancement in Artificial Intelligence has lead to the developments of various “smart" devices. Character recognition device is one of such smart devices that acquire partial human intelligence with the ability to capture and recognize various characters in different languages. Firstly multiscale neural training with modifications in the input training vectors is adopted in this paper to acquire its advantage in training higher resolution character images. Secondly selective thresholding using minimum distance technique is proposed to be used to increase the level of accuracy of character recognition. A simulator program (a GUI) is designed in such a way that the characters can be located on any spot on the blank paper in which the characters are written. The results show that such methods with moderate level of training epochs can produce accuracies of at least 85% and more for handwritten upper case English characters and numerals.

Keywords: Character recognition, multiscale, backpropagation, neural network, minimum distance technique.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1056322

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1927

References:


[1] Wu, P.H. (2003), Handwritten Character Recognition, B.Eng (Hons) Thesis, the School of Information Technology and Electrical Engineering, the University of Queensland.
[2] Liou, C.Y. & Yang, H.C. (1996), "Hand printed Character Recognition Based on Spatial Topology Distance Measurement", IEEE Transactions On Pattern Analysis and Machine Intelligence, Vol. 18. No. 9, pp 941- 945.
[3] Didaci, L. & Giacinto, G. (2004), Dynamic Classifier Selection by Adaptive k-Nearest-Neighbourhood Rule, Available: http://ce.diee.unica.it/en/publications/papers-prag/MCS-Conference- 19.pdf (Accessed: 2007, October 11th).
[4] Brown, E.W. (1993), Applying Neural Networks to Character Recognition, Available: http://www.ccs.neu.edu/home/feneric/charrecnn.html (Accessed: 2007, October 11th).
[5] Robinson, G. (1995), The Multiscale Technique, Available: http://www.netlib.org/utk/lsi/pcwLSI/text/node123.html (Accessed: 2007, October 11th).
[6] Handwritten Character Recognition, Available: http://tcts.fpms.ac.be/rdf/hcrinuk.htm (Accessed: 2007, October 11th).
[7] Rivals I. & Personnaz L. A statistical procedure for determining the optimal number of hidden neurons of a neural model. Second International Symposium on Neural Computation (NC.2000), Berlin, May 23-26 2000.