A Performance of Combined Methods of VCG and 16BCD for Feature Extraction on HSV

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Author(s)

Arief Bramanto Wicaksono Putra 1 Mulyanto 1 Bedi Suprapty 1 Achmad Fanany Onnilita Gaffar 1,*

1. Department of Information Technology, Politeknik Negeri Samarinda, East Kalimantan, Indonesia

* Corresponding author.

DOI: https://doi.org/10.5815/ijigsp.2021.03.02

Received: 28 Oct. 2020 / Revised: 13 Jan. 2021 / Accepted: 28 Feb. 2021 / Published: 8 Jun. 2021

Index Terms

Handwritten Signature Verification (HSV), Virtual Center of Gravity (VCG), 16BCD, Original Signature Pattern (OSP)

Abstract

The digital signature image is a digital pattern with highly variable features. The pattern recognition of digital signature images aims to build a specific characteristic capable of representing a considerable pattern variation while maintaining the boundary conditions of authentication. The feature as an attribute that describes the characteristics of a pattern becomes a determinant factor of reliability of a method of recognizing digital signature image pattern for Handwritten Signature Verification (HSV). To construct HSV required two types of signature samples that are the original signature samples used as training samples and the guess signature samples (consist of valid and imposter signature) which are used as test samples. This study proposes two unique features of 16-Bits Binary Chain to Decimal (16BCD) and Virtual Center of Gravity (VCG). The 16BCD feature obtained from image segmentation with a 4x4 pixel region. All pixels in each region of the segmentation result rearranged into a 16-bit binary chain. The VCG feature is a virtual representation of the Original Signature Pattern (OSP) gravity center against Pattern Space and Background. The verification mechanism uses criteria: the percent of acceptable correlation coefficients for the acceptable feature of 16BCD feature, Mean Absolute Error (MAE) against 16BCD, and the percent deviation of acceptable distance to the VCG feature prototype. Verification test results obtained Acceptance Rate (AR) 80% (which states the percentage of HSV success based on a number of original signature samples) with an efficiency of 90% (which states the percentage of success of HSV in distinguishing valid or forgery signature based on a sample of guessing signatures).

Cite This Paper

Arief Bramanto Wicaksono Putra, Mulyanto, Bedi Suprapty, Achmad Fanany Onnilita Gaffar, " A Performance of Combined Methods of VCG and 16BCD for Feature Extraction on HSV", International Journal of Image, Graphics and Signal Processing(IJIGSP), Vol.13, No.3, pp. 13-32, 2021. DOI: 10.5815/ijigsp.2021.03.02

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