Universiti Teknologi Malaysia Institutional Repository

Enhanced copy-paste image forgery detection based on archimedean spiral and coarse-to-fine approach

Sekeh, Mohammad Akbarpour (2013) Enhanced copy-paste image forgery detection based on archimedean spiral and coarse-to-fine approach. PhD thesis, Universiti Teknologi Malaysia, Faculty of Computing.

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Abstract

Duplicated region detection is one of the most common blind image forgery detection techniques to detect evidence of tampering and this is done by scrutinizing clues in a copy-paste image forgery. Two main issues for detecting copy-paste image forgery are robust feature extraction and computational complexity. The major and specific challenges are to improve robustness especially against rotation for small size duplicated regions and improve time complexity of block similarity detection due to blindly matching in current methods. In this study, a copy-paste image forgery detection model is enhanced by including two proposed algorithms. The algorithms are Spiral Unique Sequence feature (SUS) based on Archimedean spiral to address the robustness issue and Coarse-To-Fine (CTF) block-matching algorithm based on sequential straightforward block clustering technique to resolve the time complexity issue. For evaluating the performance of SUS and CTF, MICC-F220 dataset from University of Florence and FC2010 dataset from Universiti Teknologi Malaysia were used. To measure the robustness of SUS, two sizes of blocks including ����� pixels and ��� pixels were analysed and the results were compared with Zernike moment’s robustness. For the first blocksize, the robustness improvement of SUS against noise and compression were 9.6% and 1.7% respectively but, was -2.9% against rotation. However, for the second blocksize, the robustness of SUS against noise, compression, and rotation were improved by 21.3%, 18.9%, 30.8% respectively. Next, the performance of CTF computational time was analysed in different cases of the number of clusters and compared with Lexicographical-sorting method. When the number of clusters exceeded a specific threshold, the computational time of CTF matching was significantly reduced. In conclusion, the experimental results and mathematical analysis demonstrated that SUS feature with coarse-to-fine block matching algorithm have made considerable improvements in terms of robustness and time complexity thus contributing to the area of duplicated region detection in forensic science.

Item Type:Thesis (PhD)
Additional Information:Thesis (Ph.D (Sains Komputer)) – Universiti Teknologi Malaysia, 2013; Supervisor : Prof. Mohd. Aizain Maarof, Prof. Dr. Dzulkifli Mohammad
Uncontrolled Keywords:image analysis, image processing, digital techniques
Subjects:Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Divisions:Computing
ID Code:43961
Deposited By: Fazli Masari
Deposited On:02 Feb 2015 08:16
Last Modified:22 Jun 2017 01:09

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