Pengenalan Angka Tulisan Tangan Menggunakan Jaringan Syaraf Tiruan


Herman Herman(1*); Lukman Syafie(2); Dolly Indra(3);

(1) Universitas Muslim Indonesia
(2) Universitas Muslim Indonesia
(3) Universitas Muslim Indonesia
(*) Corresponding Author

  

Abstract


Current technological developments spur the application of pattern recognition in various fields, such as the introduction of signature patterns, fingerprints, faces, and handwriting. Human handwriting has differences between one another and often handwriting is difficult to read or difficult to recognize and this can hamper daily activities, such as transaction activities that require handwriting. Even one of the biometric features of everyone is handwriting. One method that can be used to recognize handwriting patterns in the field of computer science is artificial neural networks (ANN) with the learning algorithm is backpropagation. Artificial neural networks are able to recognize something based on the past. This means that past data will be studied so as to be able to make decisions on new data. To recognize handwriting patterns using artificial neural networks, the characteristics of handwritten objects are extracted using an invariant moment. The results of training using artificial neural networks indicate that the correlation coefficient value is obtained on the number of hidden layer neurons by 30. The highest correlation coefficient value is 0.61382. The test results on the test data obtained an accuracy rate of 11.67% of the total test data.


Keywords


handwriting pattern; artificial neural networks; numbers; moment invariant

  
  

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Digital Object Identifier

doi  https://doi.org/10.33096/ilkom.v10i2.317.201-206
  

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References


R.A. Misnadin, S.A.S. Mola, A. Fanggidae, “Pengenalan Pola Tulisan Tangan Dengan Metode K-Nearest Neighbor,”J-ICON., Vol.2, No. 1, pp. 65-72, 2014.

R. Rosnelly, “Pengenalan Pola Angka Tulisan Tangan Pada Cek Menggunakan Neocognitron,” CSRID Journal., Vol. 10, No. 1, pp. 23-32, 2018.

T. Handhayani, “Identifikasi Penulis Melalui Pola Tulisan Tangan Menggunakan Algoritma Support Vactor Machine,” Jurnal Muara., Vol. 1, No. 1, pp. 210-217, 2017.

Herman and A. Harjoko, “Pengenalan Spesies Gulma Berdasarkan Bentuk dan Tekstur Daun Menggunakan Jaringan Syaraf Tiruan,” IJCCS., Vol. 9, No. 2, pp. 207-218, 2015.

D. Indra, “Pendeteksian Tepi Objek Menggunakan Metode Gradien,” Jurnal Ilmiah ILKOM., Vol. 8, No. 2, pp. 69-75, 2016.

D. Putra, Pengolahan Citra Digital., Andi Publisher, Yogyakarta, 2010.


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Copyright (c) 2018 Herman Herman, Lukman Syafie, Dolly Indra

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