Identification of printing paper based on texture using gabor filters and local binary patterns

Shihab Hamad Khaleefah, Mohammad Faidzul Nasrudin

Research output: Contribution to journalArticle

3 Citations (Scopus)

Abstract

There are many causes of deformation in an image and one of which during its acquisition to a digital image. The deformation takes different forms or causes different effects on the acquired image comparing with the original image including poor resolution, shear, noise, variation in the intensity and etc. A paper scanned by a scanner is a good example of possible deformation in images. Consequently, paper texture identification or fingerprinting is one of the research fields of pattern recognition that exposed to the deformation problem. Applications such as documents authentication deemed to be constrained by the deformation problem. Subsequently, one of the well-known methods in images texture extraction is the Locale Binary Pattern (LBP) method. However, the LBP method show a number of drawbacks in paper images texture extraction and two of which are neglecting some texture information of the images and incompetent to some images deformation due to its local view. In this paper combinations of Gabor filters and a LBP operator are proposed to reduce the effects of the mentioned drawbacks in papers fingerprinting domain. We use self-collected textures from 102 paper images in the test. The images are acquired in three resolutions of 50 DPI, 100 DPI and 150 DPI in order to manifest robust results. Consequently, the testing results of the proposed combinations improve paper images identification accuracy. This paper finds that applying Gabor filters prior to LBP method improve the LBP operator description and the fingerprinting accuracy.

Original languageEnglish
Pages (from-to)279-289
Number of pages11
JournalJournal of Theoretical and Applied Information Technology
Volume86
Issue number2
Publication statusPublished - 20 Apr 2016

Fingerprint

Gabor filters
Gabor Filter
Printing
Texture
Textures
Binary
Locale
Image texture
Fingerprinting
Authentication
Pattern recognition
Operator
Scanner
Digital Image
Testing
Pattern Recognition

Keywords

  • Chi square
  • Gabor filter local binary pattern (GFLBP)
  • Gabor filters(GF)
  • Local binary pattern (LBP)
  • Paper fingerprinting
  • Pattern recognition

ASJC Scopus subject areas

  • Computer Science(all)
  • Theoretical Computer Science

Cite this

Identification of printing paper based on texture using gabor filters and local binary patterns. / Khaleefah, Shihab Hamad; Nasrudin, Mohammad Faidzul.

In: Journal of Theoretical and Applied Information Technology, Vol. 86, No. 2, 20.04.2016, p. 279-289.

Research output: Contribution to journalArticle

@article{093d60960ae64afaa063d12ea573244e,
title = "Identification of printing paper based on texture using gabor filters and local binary patterns",
abstract = "There are many causes of deformation in an image and one of which during its acquisition to a digital image. The deformation takes different forms or causes different effects on the acquired image comparing with the original image including poor resolution, shear, noise, variation in the intensity and etc. A paper scanned by a scanner is a good example of possible deformation in images. Consequently, paper texture identification or fingerprinting is one of the research fields of pattern recognition that exposed to the deformation problem. Applications such as documents authentication deemed to be constrained by the deformation problem. Subsequently, one of the well-known methods in images texture extraction is the Locale Binary Pattern (LBP) method. However, the LBP method show a number of drawbacks in paper images texture extraction and two of which are neglecting some texture information of the images and incompetent to some images deformation due to its local view. In this paper combinations of Gabor filters and a LBP operator are proposed to reduce the effects of the mentioned drawbacks in papers fingerprinting domain. We use self-collected textures from 102 paper images in the test. The images are acquired in three resolutions of 50 DPI, 100 DPI and 150 DPI in order to manifest robust results. Consequently, the testing results of the proposed combinations improve paper images identification accuracy. This paper finds that applying Gabor filters prior to LBP method improve the LBP operator description and the fingerprinting accuracy.",
keywords = "Chi square, Gabor filter local binary pattern (GFLBP), Gabor filters(GF), Local binary pattern (LBP), Paper fingerprinting, Pattern recognition",
author = "Khaleefah, {Shihab Hamad} and Nasrudin, {Mohammad Faidzul}",
year = "2016",
month = "4",
day = "20",
language = "English",
volume = "86",
pages = "279--289",
journal = "Journal of Theoretical and Applied Information Technology",
issn = "1992-8645",
publisher = "Asian Research Publishing Network (ARPN)",
number = "2",

}

TY - JOUR

T1 - Identification of printing paper based on texture using gabor filters and local binary patterns

AU - Khaleefah, Shihab Hamad

AU - Nasrudin, Mohammad Faidzul

PY - 2016/4/20

Y1 - 2016/4/20

N2 - There are many causes of deformation in an image and one of which during its acquisition to a digital image. The deformation takes different forms or causes different effects on the acquired image comparing with the original image including poor resolution, shear, noise, variation in the intensity and etc. A paper scanned by a scanner is a good example of possible deformation in images. Consequently, paper texture identification or fingerprinting is one of the research fields of pattern recognition that exposed to the deformation problem. Applications such as documents authentication deemed to be constrained by the deformation problem. Subsequently, one of the well-known methods in images texture extraction is the Locale Binary Pattern (LBP) method. However, the LBP method show a number of drawbacks in paper images texture extraction and two of which are neglecting some texture information of the images and incompetent to some images deformation due to its local view. In this paper combinations of Gabor filters and a LBP operator are proposed to reduce the effects of the mentioned drawbacks in papers fingerprinting domain. We use self-collected textures from 102 paper images in the test. The images are acquired in three resolutions of 50 DPI, 100 DPI and 150 DPI in order to manifest robust results. Consequently, the testing results of the proposed combinations improve paper images identification accuracy. This paper finds that applying Gabor filters prior to LBP method improve the LBP operator description and the fingerprinting accuracy.

AB - There are many causes of deformation in an image and one of which during its acquisition to a digital image. The deformation takes different forms or causes different effects on the acquired image comparing with the original image including poor resolution, shear, noise, variation in the intensity and etc. A paper scanned by a scanner is a good example of possible deformation in images. Consequently, paper texture identification or fingerprinting is one of the research fields of pattern recognition that exposed to the deformation problem. Applications such as documents authentication deemed to be constrained by the deformation problem. Subsequently, one of the well-known methods in images texture extraction is the Locale Binary Pattern (LBP) method. However, the LBP method show a number of drawbacks in paper images texture extraction and two of which are neglecting some texture information of the images and incompetent to some images deformation due to its local view. In this paper combinations of Gabor filters and a LBP operator are proposed to reduce the effects of the mentioned drawbacks in papers fingerprinting domain. We use self-collected textures from 102 paper images in the test. The images are acquired in three resolutions of 50 DPI, 100 DPI and 150 DPI in order to manifest robust results. Consequently, the testing results of the proposed combinations improve paper images identification accuracy. This paper finds that applying Gabor filters prior to LBP method improve the LBP operator description and the fingerprinting accuracy.

KW - Chi square

KW - Gabor filter local binary pattern (GFLBP)

KW - Gabor filters(GF)

KW - Local binary pattern (LBP)

KW - Paper fingerprinting

KW - Pattern recognition

UR - http://www.scopus.com/inward/record.url?scp=84964255405&partnerID=8YFLogxK

UR - http://www.scopus.com/inward/citedby.url?scp=84964255405&partnerID=8YFLogxK

M3 - Article

AN - SCOPUS:84964255405

VL - 86

SP - 279

EP - 289

JO - Journal of Theoretical and Applied Information Technology

JF - Journal of Theoretical and Applied Information Technology

SN - 1992-8645

IS - 2

ER -