2022
DOI: 10.1155/2022/1574024
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Identifying the Digital Camera from Natural Images Using Residual Noise and the Jensen–Shannon Divergence

Abstract: Regarding the problem of digital camera identification, many methods have been proposed, and for several of them, their effectiveness has been verified on the basis of disputed flat images. However, in real cases the disputed images are natural images, rather than flat images. In that case, several of the already proposed methods are not effective. Hence, in this paper, a method is proposed for the digital camera identification from natural images based on the statistical comparison between the residual noise … Show more

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Cited by 3 publications
(1 citation statement)
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“…Rodrıguez-Santos et al [20] proposed employing Jensen-Shannon divergence (JSD) to statistically compare the PRNU-based fingerprint of each qualifying source camera against the noise residual of the disputed image for the digital camera identification technique. Zhang et al [21] proposed an iterative algorithm tri-transfer learning (TTL) for source camera identification, this algorithm combines transfer learning with tri-training learning.…”
Section: Sensor Pattern Noise-based Techniquesmentioning
confidence: 99%
“…Rodrıguez-Santos et al [20] proposed employing Jensen-Shannon divergence (JSD) to statistically compare the PRNU-based fingerprint of each qualifying source camera against the noise residual of the disputed image for the digital camera identification technique. Zhang et al [21] proposed an iterative algorithm tri-transfer learning (TTL) for source camera identification, this algorithm combines transfer learning with tri-training learning.…”
Section: Sensor Pattern Noise-based Techniquesmentioning
confidence: 99%