Comparison of Static Signature Identification using Artificial Neural Networks Based on Haar, Daubechies and Symlets Wavelet Transformations
(1) Sanata Dharma University
(*) Corresponding Author
Abstract
. Signature is a biometric attribute that is quite important for each individual that can be used as self-identity. Until now, the signature is still used as a sign of legal approval and is agreed upon by everyone. This makes the signature worthy of attention from a security aspect. Various approaches have been proposed in the development of signature identification to minimize signature forgery. This study will discuss the identification of signatures by using the image of the signature on paper. This identification consists of two processes, namely training and testing by utilizing Artificial Neural Networks Backpropagation and Wavelet Transform. Optimal results are obtained by using ANN which has learning rate 0,09, two hidden layers, each 20 and 10 nodes with the most superior Wavelet Haar reaching 94.44%
Keywords: Signature, ANN, Identification, Backpropagation, Wavelet
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M. Khamdi, "Solo Pos," 20 October 2013. [Online]. Available: www.solopos.com. [Accessed 13 Agustus 2021].
M. G. Haleem, L. E. George and H. M. Bayti, "Fingerprint Recognition Using Haar Wavelet Transformation and Local Ridge Attributes Only," International Journal of Advanced Research in Computer Science and Software Engineering, vol. 4, no. 1, pp. 122-130, January 2014.
S. S. Kharkhar, H. J. Mali, S. S. Gandhari, S. S. Shrikande and D. K. Chitre, "Handwriting Recognition Using Neural Network," International Journal of Engineering Development and Research, vol. 5, no. 4, pp. 1179-1181, December 2017.
P. Sovia, M. Yanto and W. Nursany, "Implementation of Signature Recognition Using Backpropagation," Journal of Computer Science and Information Technology, vol. 1, no. 1, pp. 30-44, December 2016.
O. Rangel, D. Amaya and O. Ramos, "Pattern Recognition of Speech Signals Using Wavelet Transform and Artificial Intelligence," International Journal of Applied Engineering Research, vol. 12, no. 21, pp. 11088-11093, August 2017.
Y. Y. Munaye and G. B. Tarekegn, "Signature Recognition System Using Artificial Neural Network," European Journal of Computer Science and Information Technology, vol. 6, no. 2, pp. 42-47, April 2018.
N. Z. Zacharis, "Predicting Student Academic Performance in Blended Learning Using Artificial Neural Network," International Journal of Articial Intelligence and Applications, vol. 7, no. 5, pp. 17-29, September 2016.
P. G. Patil and R. S. Hegadi, "Offline Handwritten Signature Classification Using Wavelet and Support Vector Machines," International Journal of Engineering Science and Innovative Technology, vol. 2, no. 3, pp. 37-42, May 2013.
S. P. Divya, K. Depti and D. S. Rao, "Signature Analysis of Centrifugal Fan Response Due to Unbalance Using Wavelet Analysis," International Journal of Advance Research In Science and Engineering, vol. 2, no. 3, pp. 205-213, July 2014.
Suma'inna, "Detection of Cardiac Abnormalities Based on ECG Pattern Recognition Using Wavelet and Artificial Neural Network," Pushpa Publishing House, vol. 76, no. 1, pp. 111-122, May 2013.
P. Meibner, H. Watschke, J. Winter and T. Vietor, "Artificial Neural Network Based Material Parameter Identification for Numerical Simulations of Additively Manufactured Parts by Material Extrusion," MDPI, vol. 12, no. 2949, pp. 1-28, December 2020.
J. M. Castillo, J. M. Cspedes and H. E. Cuchango, "Water Level Prediction Using Artificial Neural Network Model," International Journal of Applied Engineering Research, vol. 13, no. 19, pp. 14378-14381, July 2018.
DOI: https://doi.org/10.24071/ijasst.v4i1.4786
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Publisher : Faculty of Science and Technology
Society/Institution : Sanata Dharma University
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