Pengenalan Karakter Tulisan Tangan Jawi Menggunakan Metode New Relative Context dan SVM

  • Rizal Fikri Universitas Syiah Kuala
  • Fitri Arnia Universitas Syiah Kuala
  • Rusdha Muharar Universitas Syiah Kuala
Keywords: pengenalan karakter, karakter Jawi, NRC, SVM

Abstract

Dot is an important attribute in character recognition. Similarly in Jawi characters, a dot becomes a special characteristic that distinguish different characters with the same basic shape. Most of feature extraction methods only recognize the characters based on their basic shape and ignore the dots, such as Relative Context (RC). RC classifies characters with the same basic shape into a group. Therefore, the result recognition of RC is not individual characters, but the name of group character. To identify individual character, a new method for RC enhancement is introduced. The method is called New Relative Context (NRC). NRC works by separating characters into some areas. The wider area is defined as the basic shape, while other areas are defined as dot attribute. In this paper Support Vector Machine (SVM) is used to classify eleven sets of isolated Jawi characters. Eight sets of character images are used in the training phase, while in the testing phase three sets of images are used. The recognition rate of this method achieves 80%.

References

A. J. Borham, “Tulisan Jawi : Tulisan Serantau,” Seminar Tulisan Jawi dan Teknologi Peringkat Kebangsaaan., Universiti Malaysia Pahang - Pahang, 2012.

M. F. Nasrudin and M. Petrou, “Offline Handwritten Jawi Recognition using the Trace Transform,” Proc. International Conference on Pattern Analysis and Intelligent Robotics., Vol 1. pp. 87-91, June 28-29, 2011.

M. F. Nasrudin, K. Omar, M. S. Zakaria, and L. C. Yeun, “Handwritten Cursive Jawi Character Recognition: A Survey,” Proc. Fifth International Conference on Computer Graphics, imaging and Visualization., pp. 247-256, 2008.

A. Marwa, Z. Kamel, Z. Salah, and G. Khaled, “Arabic Character Recognition Based M-SVM: Review,” Proc. Second International Conference Advanced Machine Learning Technologies and Applications., pp. 18-25, November 28-30, 2014.

M. Kusban, "Verifikasi dan Identifikasi Telapak Tangan dengan Kernel Gabor", JNTETI, Vol. 4, No. 2, Mei 2015.

A. D. Trier, A. K. Jain, and T. Taxt, "Feature Extraction Methods for Character Recognition - A Survey", Pattern Recognition, vol. 29, pp. 641-662, 1996.

M. A. Abuzaraiza, A. M. Zeki, and A. M. Zeki, “Feature Extraction Techniques of Online Handwriting Arabic Text Recognition”, Proc. Fifth International Conference on Information and Communication Technology for the Muslim World., pp.1-7, March 26-27, 2013.

S. Izadi and C. Y. Suen, "Online Writer-Independent Character Recognition Using a Novel Relational Context Representation," Proc. Seventh International Conference on Machine Learning and Applications (ICMLA '08)., pp. 867-870, Dec 11-13, 2008.

C. Burges, “A Tutorial on Support Vector Machines for Pattern Recognition”, Data Mining and Knowledge Discovery, Kluwer Academic Publishers, Vol . 2, pp. 121-167, Juni 1998.

M. Mori, Charagter Recognition, 1st ed, Sciyo, 2010.

A. N. Kurniawan, T. S. Widodo, dan I. Soesanti, "Penapisan Artifak Logam pada Citra CT-scan dengan Spatial Filter", JNTETI, Vol. 2, No. 4, Februari 2013.

How to Cite
Rizal Fikri, Fitri Arnia, & Rusdha Muharar. (1). Pengenalan Karakter Tulisan Tangan Jawi Menggunakan Metode New Relative Context dan SVM. Jurnal Nasional Teknik Elektro Dan Teknologi Informasi, 5(3), 233-238. Retrieved from https://jurnal.ugm.ac.id/v3/JNTETI/article/view/2941
Section
Articles