SSS-PRNU: Privacy-Preserving PRNU Based Camera Attribution using Shamir Secret Sharing
Riyanka Jena, Priyanka Singh, Manoranjan Mohanty

TL;DR
This paper introduces SSS-PRNU, a privacy-preserving method for camera attribution using PRNU noise, which employs secret sharing and secure computation to protect camera owner privacy during forensic analysis.
Contribution
The paper presents a novel scheme that enables privacy-preserving PRNU-based camera attribution through secret sharing and secure correlation computation in distributed environments.
Findings
Feasibility demonstrated through experimental validation.
Secure correlation computation in encrypted domain.
Acceptable computational and storage overheads.
Abstract
Photo Response Non-Uniformity(PRNU) noise has proven to be very effective tool in camera based forensics. It helps to match a photo to the device that clicked it. In today's scenario, where millions and millions of images are uploaded every hour, it is very easy to compute this unique PRNU pattern from a couple of shared images on social profiles. This endangers the privacy of the camera owner and becomes a cause of major concern for the privacy-aware society. We propose SSS-PRNU scheme that facilitates the forensic investigators to carry out their crime investigation without breaching the privacy of the people. Thus, maintaining a balance between the two. To preserve privacy, extraction of camera fingerprint and PRNU noise for a suspicious image is computed in a trusted execution environment such as ARM TrustZone. After extraction, the sensitive information of camera fingerprint and…
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Taxonomy
TopicsDigital Media Forensic Detection · Advanced Steganography and Watermarking Techniques · Chaos-based Image/Signal Encryption
