Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan

Manipulation of digital images is not considered a new thing nowadays. For as long as cameras have existed, photographers have been staged and images have been forged and passed off for more nefarious purposes. Region duplication is regarded as an efficient and simple operation for image forgeries,...

Full description

Saved in:
Bibliographic Details
Main Author: Diaa , Mohammed Hassan Uliyan
Format: Thesis
Published: 2016
Subjects:
Online Access:http://studentsrepo.um.edu.my/11897/1/Diaa_Mohammed.pdf
http://studentsrepo.um.edu.my/11897/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.um.stud.11897
record_format eprints
spelling my.um.stud.118972021-04-06T18:15:48Z Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan Diaa , Mohammed Hassan Uliyan QA75 Electronic computers. Computer science QA76 Computer software Manipulation of digital images is not considered a new thing nowadays. For as long as cameras have existed, photographers have been staged and images have been forged and passed off for more nefarious purposes. Region duplication is regarded as an efficient and simple operation for image forgeries, where a part of the image itself is copied and pasted into a different part of the same image grid. The detection of duplicated regions can be a challenging task in digital image forensic (DIF) when images are used as evidence to influence the judgment, such as in court of law. Existing methods have been developed in the literature to reveal duplicated regions. These methods are classified into block-based and key point-based methods. Most prior block based methods rely on exhaustive block matching on image contents and suffer from their inability to localize this type of forgery when the duplicated regions have gone through some geometric transformation operations and post-processing operations. In this research, we propose three novel approaches for detecting duplicate regions in forged images that are robust to common geometric transformations and post processing operations. In the first approach, we propose a novel method for detecting uniform and non-uniform duplicated regions with small size in forged images that is robust to geometric transformation operations such as rotation and scaling. The proposed method have adopted statistical region merging (SRM) algorithm to detect small regions, and then Harris interest points are localized in angular radial partition (ARP) of a circular region which are invariant to rotation and scale transformations. Moreover, feature vectors for a circular patch around Harris points are extracted using Hӧlder estimation regularity based descriptor (HGP-2) to reduce false positives. In the second approach, we therefore proposed a forensic algorithm to recognize the blurred duplicate regions in a synthesized forged image efficiently, especially when the forged region in the images is small. The method is based on blur metric evaluation (BME) and phase congruency (PCy). In the third approach, we proposed a detection method to reveal the forgery under illumination variations. The proposed method used Hessian to detect the keypoints and their corresponding features are represented by robust descriptor known as Center symmetric local binary pattern (CSLBP). The proposed methods be evaluated on two benchmark datasets. The first one is MICC-F220 which contains 220 JPEG images. The second dataset is an image manipulation dataset which includes 48 PNG true color. The experimental results illustrate that the proposed algorithms are robust against several geometric changes, such as JPEG compression, rotation, noise, blurring, illumination variations, and scaling. Furthermore, the proposed methods are resistant to forgery where small up to 8*8 pixels and flat regions are involved, with little visual structures. The average detection rate of our algorithm maintained 96 % true positive rate and 7 % false positive rate which outperform several current detection methods. 2016 Thesis NonPeerReviewed application/pdf http://studentsrepo.um.edu.my/11897/1/Diaa_Mohammed.pdf Diaa , Mohammed Hassan Uliyan (2016) Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan. PhD thesis, University of Malaya. http://studentsrepo.um.edu.my/11897/
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Student Repository
url_provider http://studentsrepo.um.edu.my/
topic QA75 Electronic computers. Computer science
QA76 Computer software
spellingShingle QA75 Electronic computers. Computer science
QA76 Computer software
Diaa , Mohammed Hassan Uliyan
Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan
description Manipulation of digital images is not considered a new thing nowadays. For as long as cameras have existed, photographers have been staged and images have been forged and passed off for more nefarious purposes. Region duplication is regarded as an efficient and simple operation for image forgeries, where a part of the image itself is copied and pasted into a different part of the same image grid. The detection of duplicated regions can be a challenging task in digital image forensic (DIF) when images are used as evidence to influence the judgment, such as in court of law. Existing methods have been developed in the literature to reveal duplicated regions. These methods are classified into block-based and key point-based methods. Most prior block based methods rely on exhaustive block matching on image contents and suffer from their inability to localize this type of forgery when the duplicated regions have gone through some geometric transformation operations and post-processing operations. In this research, we propose three novel approaches for detecting duplicate regions in forged images that are robust to common geometric transformations and post processing operations. In the first approach, we propose a novel method for detecting uniform and non-uniform duplicated regions with small size in forged images that is robust to geometric transformation operations such as rotation and scaling. The proposed method have adopted statistical region merging (SRM) algorithm to detect small regions, and then Harris interest points are localized in angular radial partition (ARP) of a circular region which are invariant to rotation and scale transformations. Moreover, feature vectors for a circular patch around Harris points are extracted using Hӧlder estimation regularity based descriptor (HGP-2) to reduce false positives. In the second approach, we therefore proposed a forensic algorithm to recognize the blurred duplicate regions in a synthesized forged image efficiently, especially when the forged region in the images is small. The method is based on blur metric evaluation (BME) and phase congruency (PCy). In the third approach, we proposed a detection method to reveal the forgery under illumination variations. The proposed method used Hessian to detect the keypoints and their corresponding features are represented by robust descriptor known as Center symmetric local binary pattern (CSLBP). The proposed methods be evaluated on two benchmark datasets. The first one is MICC-F220 which contains 220 JPEG images. The second dataset is an image manipulation dataset which includes 48 PNG true color. The experimental results illustrate that the proposed algorithms are robust against several geometric changes, such as JPEG compression, rotation, noise, blurring, illumination variations, and scaling. Furthermore, the proposed methods are resistant to forgery where small up to 8*8 pixels and flat regions are involved, with little visual structures. The average detection rate of our algorithm maintained 96 % true positive rate and 7 % false positive rate which outperform several current detection methods.
format Thesis
author Diaa , Mohammed Hassan Uliyan
author_facet Diaa , Mohammed Hassan Uliyan
author_sort Diaa , Mohammed Hassan Uliyan
title Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan
title_short Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan
title_full Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan
title_fullStr Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan
title_full_unstemmed Region duplication forgery detection technique based on keypoint matching / Diaa Mohammed Hassan Uliyan
title_sort region duplication forgery detection technique based on keypoint matching / diaa mohammed hassan uliyan
publishDate 2016
url http://studentsrepo.um.edu.my/11897/1/Diaa_Mohammed.pdf
http://studentsrepo.um.edu.my/11897/
_version_ 1738506542482718720
score 13.15806