Abstract

<p>Feature extraction is one of the most improtant step on characters recognition system. Transition features is one from many features used on characters recognition system. This paper report a research on handwritten basic Jawanesse characters recognition system to found the proper numbers of transitions used on transition features. To recognize the characters,the Multiclass Support Vector Machines were used. The Directed Acyclic Graph (DAG) SVM were used for multiclass classification strategy and to map each input vector to a higher dimention space, the Gaussian Radial Basis Function (RBF) kernel with parameter 1were used. It can be shown, for basicJawanesse characters recognition system, the optimal numbers of transitions used for transition features is 4 (a half of maximum numbers of transition on all patterns).</p>

Highlights

  • Komputerisasi aksara Jawa dapat digunakan sebagai media pembelajaran dan melestarikan keberadaan aksara Jawa yang sudah mulai jarang digunakan (Sayogo, 2006a, 2006b)

  • This paper report a research on handwritten basic Jawanesse characters recognition system to found the proper numbers of transitions used on transition features

  • Widiarti, A.R., 2006, Pengenalan Citra Dokumen Sastra Jawa Konsep dan Implementasinya, Tesis S-2 Ilmu Komputer Program Pascasarjana UGM, Yogyakarta

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Summary

Aksara Jawa Nglegeno dengan Multiclass Support Vector Machines

Numbers of Transition Features on Basic Jawanesse (Nglegeno) Characters Recognition System with Multiclass Support Vector Machines. The Directed Acyclic Graph (DAG) SVM were used for multiclass classification strategy and to map each input vector to a higher dimention space, the Gaussian Radial Basis Function (RBF) kernel with parameter 1 were used It can be shown, for basic Jawanesse characters recognition system, the optimal numbers of transitions used for transition features is 4 (a half of maximum numbers of transition on all patterns). (2009) melakukan pengenalan terhadap tulisan tangan aksara Jawa nglegeno terisolasi dengan menggunakan ciri batang (Gader et al, 1995b) dan ciri transisi (Gadel et al, 1997) serta menggunakan Multiclass Support Vector Machines (SVM) sebagai pengelompoknya.

AKSARA JAWA
SISTEM PENGENALAN POLA TULISAN TANGAN
CIRI TRANSISI
Gaussian RBF Sigmoid
METODE PENELITIAN
Tingkat keberhasilan
KESIMPULAN DAN SARAN
DAFTAR PUSTAKA
Pengetikan Aksara Jawa Pada Perangkat Lunak Komputer
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