Efficient Handwritten Digit Classification using User-defined Classification Algorithm

R. Vijaya Kumar Reddy (1), U. Ravi Babu (2)
(1) Research Scholar, Dept. of. CSE, Acharya Nagarjuna University, Guntur, India.
(2) Principal, DRK College of Engineering & Technology, Hyderabad, India.
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How to cite (IJASEIT) :
Reddy, R. Vijaya Kumar, and U. Ravi Babu. “Efficient Handwritten Digit Classification Using User-Defined Classification Algorithm”. International Journal on Advanced Science, Engineering and Information Technology, vol. 8, no. 3, June 2018, pp. 970-9, doi:10.18517/ijaseit.8.3.5397.
In automatic numeral digit recognition system, feature selection is most important factor for achieving high recognition performance. To achieve this, the present paper proposed system for isolated handwritten numeral recognition using number of contours, skeleton features, Number of watersheds, and ratio between the numbers of foreground pixels in upper half part and lower half-part of the numerical digit image. Based on these features the present paper designed user-defined classification algorithm for handwritten digit recognition. To find the effectiveness of the proposed features, these features are given as an input for standard classification algorithms like k-nearest neighbor classifier, Support Vector Machines and other classification algorithms and evaluate the results.  The experimental result proves that the proposed features are well suited for handwritten digit recognition for both user and standard classification algorithms. The novelty of the proposed method is size invariant.

Y.LeCuu, B.Boser, J.S. Denker, D. Henderson, R.E. Howard, W. Hubbard and L.D. Jackel, Handwritten Digit Recognition with a Back-Propagation Network. AT&T Bell Laboratories, Holmdel, N.J.07733, 1990.

Zhou, Z.H. and Feng, J, Deep Forest: Towards an Alternative to Deep NeuralNetworks.Proceedings of the Twenty-Sixth International Joint Conference on Artificial Intelligence, pp. 3553-3559, 2017

Nielsen, M.A, Neural Networks and Deep Learning. Determination Press, http://neuralnetworksanddeeplearning.com, 2015.

Bengio, Y.I., Goodfellow, J. and Courville, A, Deep Learning. MIT Press, Cambridge, MA, http://www.deeplearningbook.org, 2016.

Farulla, G.A, Murru, N. and Rossini, R. A Fuzzy Approach for Segmentation of Touching Characters, arXiv:1612.04862v1, https://arxiv.org/abs/1612.04862, pp.1-18, 2016.

Chen, G., Li, Y. and Srihari, S.N, Word Recognition with Deep ConditionalRandom Fields. Proceedings of the IEEE International Conference on Image Processing (ICIP ), Phoenix, AZ, 25-28 September 2016.

Liu, Z., Li, Y., Ren, F. and Yu, H. A Binary Convolutional Encoder-DecoderNetwork for Real-Time Natural Scene Text Processing. arXiv: 1612.03630v1, 2016.

Jaderberg, M., Simonyan, K., Vedaldi, A. and Zisserman.A, Reading Text inthe Wild with Convolutional Neural Networks. International Journal of Comput Vision, vol 116, pp.1-20, 2016.

Yin, X.C., Yin, X., Huang, K. and Hao, H.W, Robust Text Detection in NaturalScene Images. IEEE Transactions on Pattern Analysis and Machine Intelligence, vol 36, pp. 970-983, 2013.

Oivind Trier, Anil Jain, Torfiinn Taxt, A feature extraction method for character recognition-A survey, pattern Recognition, vol 29, pp641-662, 1996.

Shamic Surel, P.K.Das, Recognition of an Indian Scripts Using Multilayer Perceptions and fuzzy Features. Proc. Of 6th Int. Conf. on Document Analysis and Recognition (ICDAR), Seattle, pp 1220-1224, 2001.

P.Nagabhushan, S.A.Angadi, B.S.Anami,A fuzzy statistical approach of Kannada Vowel Recognition based on Invariant Moments, Proc. Of NCDAR-2003, Mandy, Karnataka, India, pp.275-285, 2003.

J.D. Tubes, A note on binary template matching. Pattern Recognition, vol 22, pp:359-365, 1989.

Anil K.Jain, Douglass Zonker, Representation and Recognition of handwritten Digits using Deformable Templates, IEEE, Pattern analysis and machine intelligence, vol 19, pp:1386 - 1390,1997.

L.Heutte, T.Paquest, J.V.Moreau, Y.Lecourtier, C.Oliver, A structural/ statistical feature based vector for handwritten character recognition, Pattern Recognition,vol 19, pp.629-641, 1998.

U Ravi Babu, Y V V Satyanarayan nd S. Marthu Perumal , Printed Telugu Numeral Recognition based on Structural, Skeleton and Water Reservoir Features, International Journal Of Computers & Technology, Vol 10, pp.1815-1824, 2013.

U Ravi Babu , U Venkateswralu and Anil Kumar, Handwritten Digit Recognition Using Structural, Statistical Features and K-nearest Neighbor Classifier. International Journal of Information Engineering and Electronic Business, vol 1, pp.62-68, 2014.

U Ravi Babu and G Charles babu, Novel Technique for the Handwritten Digit Image Features Extraction for Recognition. International Journal of Video & Image Processing and Network Security IJVIPNS-IJENS Vol 15, pp: 1-9, 2015.

Pullela S V V S R Kumar, Appana Naga Lakshmi, U Ravi Babu, New approaches for the Features Extraction on Handwritten Digit Image for Recognition. International Journal of Digital Content Technology and its Applications (JDCTA) Vol 10, pp: 33-44, 2016.

M. D. Garris, J. L. Blue and G. T. Candela, NIST form-based handprint recognition system. National Institute of Standards and Technology, 1997.

P. J. Grother, NIST special database 19 hand printed forms and characters database. National Institute of Standards and Technology, 1995.

G. G. Rajput, Rajeswari Horakeri, Sidramappa Chandrakant, Printed and Handwritten Kannada NumeralRecognition Using Crack Codes and Fourier Descriptors Plate. IJCA Special Issue on RecentTrends in Image Processing and Pattern Recognition pp.53-58 2010

Graham, D.N, Image transmission by two-dimensional contour coding. Proceedings of the IEEE Vol55, pp.336 - 346, 1967.

U. Pal, T. Wakabayashi, N. Sharm nd F. Kimura,Handwritten Numeral Recognition of Six Popular IndianScripts. In Proc. 9th International Conference on Document Analysis and Recognition. pp. 749-753, Curitiba,Brazil, September 24-26, 2007.

T. Y. Zhang and C. Y. Suen, A Fast Parallel Algorithm for Thinning Digital Patterns, Image Processing andComputer Vision, Vol 27,pp.236-239, 1984.

Seong- W han Lee,Multi layer cluster neural network for totally unconstrained handwriritten numeralrecognition. Neural Networks. Vol 8, pp.409-418, 1984.

U Pal and P.P.Roy, Multi-oriented and curved text lines extraction from Indian documents. IEEE Trans on system,Man and Cybernetics-Part B, Vol 34, pp.1667-1684, 2004.

Anuj Dutt, AashiDutt, Handwritten Digit Recognition Using Deep Learning. International Journal of Advanced Research in Computer Engineering & Technology (IJARCET), Vol 6, pp: 990-997,2017.

Hamayun A. Khan, MCS HOG Features and SVM Based HandwrittenDigit Recognition System. Journal of Intelligent Learning Systems and Applications, vol 9, pp.21-33, 2017,.

Jisha Mol L, Femy John, Handwritten Digit Recognition: ConvolutionalNeural Network as a Classifier. International Journal of Innovative Research in Computerand Communication Engineering, Vol. 5, pp. 6729-6734, 2017.

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