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- Title
Exposing image resampling forgery by using linear parametric model.
- Authors
Qiao, Tong; Zhu, Aichun; Retraint, Florent
- Abstract
Resampling forgery generally refers to as the technique that utilizes interpolation algorithm to maliciously geometrically transform a digital image or a portion of an image. This paper investigates the problem of image resampling detection based on the linear parametric model. First, we expose the periodic artifact of one-dimensional 1-D) resampled signal. After dealing with the nuisance parameters, together with Bayes' rule, the detector is designed based on the probability of residual noise extracted from resampled signal using linear parametric model. Subsequently, we mainly study the characteristic of a resampled image. Meanwhile, it is proposed to estimate the probability of pixels' noise and establish a practical Likelihood Ratio Test (LRT). Comparison with the state-of-the-art tests, numerical experiments show the relevance of our proposed algorithm with detecting uncompressed/compressed resampled images.
- Subjects
RESAMPLING (Statistics); BAYES' estimation; STATISTICAL hypothesis testing; PROBABILITY theory; LIKELIHOOD ratio tests
- Publication
Multimedia Tools & Applications, 2018, Vol 77, Issue 2, p1501
- ISSN
1380-7501
- Publication type
Article
- DOI
10.1007/s11042-016-4314-1