4.7 Article

Radon transform of image monotonic rearrangements as feature for noise sensor signature

期刊

APPLIED MATHEMATICS AND COMPUTATION
卷 457, 期 -, 页码 -

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ELSEVIER SCIENCE INC
DOI: 10.1016/j.amc.2023.128173

关键词

Radon transform; Function monotonic rearrangements; Source camera identification; PRNU

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This paper investigates the properties of the PRNU pattern noise and aims to define distinctive features for identification of acquisition sensors. The discrimination power of the decreasing rearrangement of a function combined with the Radon transform is studied. Preliminary tests show that the Radon Transform of rearranged Flat Field images alone can accurately characterize each device with high accuracy, showing robustness to standard image modifications and independence of image size.
Source camera identification represents a delicate, crucial but challenging task in digital forensics, especially when an image has to be used as a proof in a court of law. This paper investigates some properties of the Photo Response Non Uniformity (PRNU) pattern noise that represents the fingerprint of any acquisition sensor. The main goal is to define specific and distinctive features for this noise source that enable the identification of the acquisition sensor by simply analysing a few images. These features are required to be independent of image size, modifications, storage mode, etc. The discrimination power of the decreasing rearrangement of a function, combined with the Radon transform, has been investigated in this paper. Preliminary tests show that a proper rearrangement of PRNU image provides specific and device-dependent geometric structures that can be properly coded through the Radon transform. In particular, the empirical distribution of the Radon Transform of rearranged Flat Field images alone is capable to correctly characterize each device with high accuracy, showing robusteness to some standard image modifications, such as quantization and blurring; in addition, it guarantees independence of image size.& COPY; 2023 Elsevier Inc. All rights reserved.

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