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Web Photo Source Identification based on Neural Enhanced Camera Fingerprint

Authors :
Qian, Feng
He, Sifeng
Huang, Honghao
Ma, Huanyu
Zhang, Xiaobo
Yang, Lei
Publication Year :
2023

Abstract

With the growing popularity of smartphone photography in recent years, web photos play an increasingly important role in all walks of life. Source camera identification of web photos aims to establish a reliable linkage from the captured images to their source cameras, and has a broad range of applications, such as image copyright protection, user authentication, investigated evidence verification, etc. This paper presents an innovative and practical source identification framework that employs neural-network enhanced sensor pattern noise to trace back web photos efficiently while ensuring security. Our proposed framework consists of three main stages: initial device fingerprint registration, fingerprint extraction and cryptographic connection establishment while taking photos, and connection verification between photos and source devices. By incorporating metric learning and frequency consistency into the deep network design, our proposed fingerprint extraction algorithm achieves state-of-the-art performance on modern smartphone photos for reliable source identification. Meanwhile, we also propose several optimization sub-modules to prevent fingerprint leakage and improve accuracy and efficiency. Finally for practical system design, two cryptographic schemes are introduced to reliably identify the correlation between registered fingerprint and verified photo fingerprint, i.e. fuzzy extractor and zero-knowledge proof (ZKP). The codes for fingerprint extraction network and benchmark dataset with modern smartphone cameras photos are all publicly available at https://github.com/PhotoNecf/PhotoNecf.<br />Comment: Accepted by WWW2023 (https://www2023.thewebconf.org/). Codes are all publicly available at https://github.com/PhotoNecf/PhotoNecf

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.09228
Document Type :
Working Paper