4.6 Article

QDL-CMFD: A Quality-independent and deep Learning-based Copy- Move image forgery detection method

期刊

NEUROCOMPUTING
卷 511, 期 -, 页码 213-236

出版社

ELSEVIER
DOI: 10.1016/j.neucom.2022.09.017

关键词

Image forgery detection; Copy-move forgery; Deep learning; Generative adversarial networks; Convolutional neural Networks; Super-resolution enhancement

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This study presents an image forgery detection method called QDL-CMFD, which is based on deep learning. QDL-CMFD utilizes generative adversarial networks for image quality enhancement and convolutional neural networks for forgery detection. Unlike existing methods, QDL-CMFD is able to simultaneously detect multiple forged areas and determine the source and target of the forgery. Experimental results demonstrate its excellent performance in detecting low-quality forged images and small areas.
One of the prevalent methods of image forgery is copy-move, where one or more regions of an image are duplicated and moved elsewhere in the image. It is usually difficult to detect this type of forgery due to the similarity of the copied and forged areas. Also, forgers perform pre-processing and/or post-processing operations on the manipulated regions to make it even more difficult to detect. In this study, an image quality-independent method based on deep learning approach, termed QDL-CMFD, is presented for detecting this type of forgery. QDL-CMFD utilizes generative adversarial networks for image quality enhancement, and convolutional neural networks (CNN) for forgery detection. A tailored dual-branch CNN architecture is introduced consisting of two subnetworks, namely a manipulation detection subnet-work and a similarity detection subnetwork. Accordingly, unlike most existing methods, QDL-CMFD is able to simultaneous detection of several forged areas, as well as determining the source and target of the forgery. Also, QDL-CMFD is robust against various pre-processing/post-processing attacks. It shows excellent performance for detecting low-quality forged images and small areas. Experiments conducted on the CASIA and CoMoFoD benchmark datasets confirm that QDL-CMFD performs significantly better than the competitors. All the implementation source codes of QDL-CMFD are available at https://github.-com/MehradAria/QDL-CMFD.(c) 2022 Elsevier B.V. All rights reserved.

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