Image forensics through detection of imaging regularities

Every image has its unique pattern characteristic and regularities and one of image forensic methods is through pattern recognition. By detecting image regularities, an image can be identified if it is altered by digital manipulation or otherwise. In this project, the image regularities refer to an...

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Bibliographic Details
Main Author: Sai, Choong Han.
Other Authors: Kot Chichung, Alex
Format: Final Year Project
Language:English
Published: 2009
Subjects:
Online Access:http://hdl.handle.net/10356/17973
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Institution: Nanyang Technological University
Language: English
Description
Summary:Every image has its unique pattern characteristic and regularities and one of image forensic methods is through pattern recognition. By detecting image regularities, an image can be identified if it is altered by digital manipulation or otherwise. In this project, the image regularities refer to an image tampering method called artificial blurring. Two methods are proposed for detecting artificial blurring which are bispectrum analysis and noise level detection. For bispectrum analysis, it is an improvement from [1] whereby the detection of a 1-D blur model based on zero crossings is taken a step further by analyzing a 2-D blur function. This is done by transforming a 2-D problem into a 1-D problem through line segmentation with edge detection using the Sobel operator. The second method is by noise level detection where an image is divided into many smaller segments and PSNR values of these segments are calculated. It is believed that noise level pattern in an image is consistent throughout an image and if any region is tampered, it will disturb its localized noise level. These two methods are tested based on synthetic and actual images where obtained results from the two methods shows that the algorithm works fine with certain limitations. Since the development of the bispectrum analysis and noise level detection is still in its early stage, further improvements are still needed.