Improving the Authentication with Built-in Camera Protocol Using Built-in Motion Sensors: A Deep Learning Solution
Cezara Benegui, Radu Tudor Ionescu

TL;DR
This paper enhances the camera-based authentication protocol by integrating motion sensor data and deep learning, significantly reducing forgery attack success rates and improving security through multi-modal biometric verification.
Contribution
It introduces a novel multi-modal authentication protocol combining camera fingerprints and motion sensor data analyzed with deep neural networks.
Findings
False acceptance rate reduced to 0.07%
Motion sensor data improves security against forgery
Deep learning effectively identifies smartphones from sensor data
Abstract
We propose an enhanced version of the Authentication with Built-in Camera (ABC) protocol by employing a deep learning solution based on built-in motion sensors. The standard ABC protocol identifies mobile devices based on the photo-response non-uniformity (PRNU) of the camera sensor, while also considering QR-code-based meta-information. During authentication, the user is required to take two photos that contain two QR codes presented on a screen. The presented QR code images also contain a unique probe signal, similar to a camera fingerprint, generated by the protocol. During verification, the server computes the fingerprint of the received photos and authenticates the user if (i) the probe signal is present, (ii) the metadata embedded in the QR codes is correct and (iii) the camera fingerprint is identified correctly. However, the protocol is vulnerable to forgery attacks when the…
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Taxonomy
TopicsAdvanced Steganography and Watermarking Techniques · Digital Media Forensic Detection · User Authentication and Security Systems
MethodsApproximate Bayesian Computation
