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Empirical Evaluation of PRNU Fingerprint Variation for Mismatched Imaging Pipelines

Authors :
Joshi, Sharad
Korus, Pawel
Khanna, Nitin
Memon, Nasir
Joshi, Sharad
Korus, Pawel
Khanna, Nitin
Memon, Nasir
Publication Year :
2020

Abstract

We assess the variability of PRNU-based camera fingerprints with mismatched imaging pipelines (e.g., different camera ISP or digital darkroom software). We show that camera fingerprints exhibit non-negligible variations in this setup, which may lead to unexpected degradation of detection statistics in real-world use-cases. We tested 13 different pipelines, including standard digital darkroom software and recent neural-networks. We observed that correlation between fingerprints from mismatched pipelines drops on average to 0.38 and the PCE detection statistic drops by over 40%. The degradation in error rates is the strongest for small patches commonly used in photo manipulation detection, and when neural networks are used for photo development. At a fixed 0.5% FPR setting, the TPR drops by 17 ppt (percentage points) for 128 px and 256 px patches.<br />Comment: 6 pages and 3 pages supplemental file

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1228399958
Document Type :
Electronic Resource