2016
DOI: 10.5815/ijem.2016.06.01
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A Discriminative Statistical Model for Digital Image Forgery Detection

Abstract: The headway of modern technology and facility to use processing software leads to tamper and implicate of digital images. This tampering is being performed without leaving any a clear effect noted with the naked eye. The discrimination between different authentic and forged images can be based on its Probability Density Functions (PDFs). This paper introduces a new model for digital image forgery detection. This framework has two main phases; training and testing. In the training phase, the peak is calculated … Show more

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