Source camera attribution via PRNU emphasis: Towards a generalized multiplicative model
The photoresponse non-uniformity (PRNU) is a camera-specific pattern, which acts as unique fingerprint of any imaging sensor and thus is widely adopted to solve multimedia forensics problems such as device identification or forgery detection. Customarily, the theoretical analysis of this fingerprint...
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Veröffentlicht in: | Signal processing. Image communication 2023-05, Vol.114, p.116944, Article 116944 |
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Sprache: | eng |
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Zusammenfassung: | The photoresponse non-uniformity (PRNU) is a camera-specific pattern, which acts as unique fingerprint of any imaging sensor and thus is widely adopted to solve multimedia forensics problems such as device identification or forgery detection. Customarily, the theoretical analysis of this fingerprint relies on a multiplicative model for the denoising residuals. This setup assumes that the nonlinear mapping from scene irradiance to preprocessed luminance, that is, the composition of the Camera Response Function (CRF) with the digital preprocessing pipeline, is a gamma correction. However, this assumption seldom holds in practice. In this paper, we improve the multiplicative model by including the influence of this nonlinear mapping, termed PRNU emphasis, on the denoising residuals. On the theoretical side, we conduct first an exploratory analysis to show that the response of typical cameras deviates from a gamma correction. We also propose a regularized least squares estimator to measure this effect. On the practical side, we argue that the PRNU emphasis is especially beneficial for a source camera attribution problem with cropped images. We back our argument with an extensive empirical evaluation using different denoisers and both compressed and uncompressed images. This new model will pave the way to future PRNU estimators and detectors.
•Presents a generalized model that accounts for the effects of the digital preprocessing pipeline on the PRNU, termed PRNU emphasis.•Discusses different methods to estimate and apply the PRNU emphasis in different scenarios, including different denoisers and postprocessing operations.•Analysis of the performance of the new model considering cropped images, and comparison with state of the art methods. |
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ISSN: | 0923-5965 1879-2677 |
DOI: | 10.1016/j.image.2023.116944 |