Abstract
Abstract
This paper presents an algorithm for detecting one of the most commonly used types of digital image forgeries - splicing. The algorithm is based on the use of the VGG-16 convolutional neural network. The proposed network architecture takes image patches as input and obtains classification results for a patch: original or forgery. On the training stage we select patches from original image regions and on the borders of embedded splicing. The obtained results demonstrate high classification accuracy (97.8% accuracy for fine-tuned model and 96.4% accuracy for the zero-stage trained) for a set of images containing artificial distortions in comparison with existing solutions. Experimental research was conducted using CASIA dataset.
Subject
General Physics and Astronomy
Reference11 articles.
1. A robust detection algorithm for copy-move forgery in digital images;Cao;Forensic Sci. Int.,2012
2. A Copy-Move Detection Algorithm Using Binary Gradient Contours;Kuznetsov;International Conference on Image Analysis and Recognition, ICIAR,2016
3. On the robustness of constrained convolutional neural networks to jpeg post-compression for image resampling detection;Bayar,2017
4. A deep learning approach to detection of splicing and copy-move forgeries in images;Rao,2016
5. Localization of JPEG double compression through multi-domain convolutional neural networks;Amerini,2017
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