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arxiv: 1802.03154 · v2 · pith:EONVCQHSnew · submitted 2018-02-09 · 💻 cs.CV

Boosting Image Forgery Detection using Resampling Features and Copy-move analysis

classification 💻 cs.CV
keywords detectionresamplingcopy-movealgorithmsimagecloningdetectingimages
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Realistic image forgeries involve a combination of splicing, resampling, cloning, region removal and other methods. While resampling detection algorithms are effective in detecting splicing and resampling, copy-move detection algorithms excel in detecting cloning and region removal. In this paper, we combine these complementary approaches in a way that boosts the overall accuracy of image manipulation detection. We use the copy-move detection method as a pre-filtering step and pass those images that are classified as untampered to a deep learning based resampling detection framework. Experimental results on various datasets including the 2017 NIST Nimble Challenge Evaluation dataset comprising nearly 10,000 pristine and tampered images shows that there is a consistent increase of 8%-10% in detection rates, when copy-move algorithm is combined with different resampling detection algorithms.

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