DOA-GAN: Dual-Order Attentive Generative Adversarial Network for Image Copy-Move Forgery Detection and Localization

Author(s):  
Ashraful Islam ◽  
Chengjiang Long ◽  
Arslan Basharat ◽  
Anthony Hoogs
Information ◽  
2019 ◽  
Vol 10 (9) ◽  
pp. 286
Author(s):  
Younis Abdalla ◽  
M. Tariq Iqbal ◽  
Mohamed Shehata

The problem of forged images has become a global phenomenon that is spreading mainly through social media. New technologies have provided both the means and the support for this phenomenon, but they are also enabling a targeted response to overcome it. Deep convolution learning algorithms are one such solution. These have been shown to be highly effective in dealing with image forgery derived from generative adversarial networks (GANs). In this type of algorithm, the image is altered such that it appears identical to the original image and is nearly undetectable to the unaided human eye as a forgery. The present paper investigates copy-move forgery detection using a fusion processing model comprising a deep convolutional model and an adversarial model. Four datasets are used. Our results indicate a significantly high detection accuracy performance (~95%) exhibited by the deep learning CNN and discriminator forgery detectors. Consequently, an end-to-end trainable deep neural network approach to forgery detection appears to be the optimal strategy. The network is developed based on two-branch architecture and a fusion module. The two branches are used to localize and identify copy-move forgery regions through CNN and GAN.


2019 ◽  
Vol 36 (5) ◽  
pp. 5023-5035 ◽  
Author(s):  
Ernesto Aparicio-Díaz ◽  
René Cumplido ◽  
Maikel Lázaro Pérez Gort ◽  
Claudia Feregrino-Uribe

Author(s):  
Mohamed Mahmoud Fouad ◽  
Eslam Magdy Mostafa ◽  
Mohamed Abdelmoneim Elshafey

The image forgery process can be simply defined as inserting some objects of different sizes to vanish some structures or scenes. Satellite images can be forged in many ways, such as copy-paste, copy-move, and splicing processes. Recent approaches present a generative adversarial network (GAN) as an effective method for identifying the presence of spliced forgeries and identifying their locations with a higher detection accuracy of large- and medium-sized forgeries. However, such recent approaches clearly show limited detection accuracy of small-sized forgeries. Accordingly, the localization step of such small-sized forgeries is negatively impacted. In this paper, two different approaches for detecting and localizing small-sized forgeries in satellite images are proposed. The first approach is inspired by a recently presented GAN-based approach and is modified to an enhanced version. The experimental results manifest that the detection accuracy of the first proposed approach noticeably increased to 86% compared to its inspiring one with 79% for the small-sized forgeries. Whereas, the second proposed approach uses a different design of a CNN-based discriminator to significantly enhance the detection accuracy to 94%, using the same dataset obtained from NASA and the US Geological Survey (USGS) for validation and testing. Furthermore, the results show a comparable detection accuracy in large- and medium-sized forgeries using the two proposed approaches compared to the competing ones. This study can be applied in the forensic field, with clear discrimination between the forged and pristine images.


2013 ◽  
Vol 28 (6) ◽  
pp. 659-669 ◽  
Author(s):  
Irene Amerini ◽  
Lamberto Ballan ◽  
Roberto Caldelli ◽  
Alberto Del Bimbo ◽  
Luca Del Tongo ◽  
...  

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