Litcius/Paper detail

Fingerprinting encrypted voice traffic on smart speakers with deep learning

Chenggang Wang, Seán Kennedy, Haipeng Li, King Hudson, Gowtham Atluri, Xuetao Wei, Wenhai Sun, Boyang Wang

202051 citationsDOI

Abstract

This paper investigates the privacy leakage of smart speakers under an encrypted traffic analysis attack, referred to as voice command fingerprinting. In this attack, an adversary can eavesdrop both outgoing and incoming encrypted voice traffic of a smart speaker, and infers which voice command a user says over encrypted traffic. We first built an automatic voice traffic collection tool and collected two large-scale datasets on two smart speakers, Amazon Echo and Google Home. Then, we implemented proof-of-concept attacks by leveraging deep learning. Our experimental results over the two datasets indicate disturbing privacy concerns. Specifically, compared to 1% accuracy with random guess, our attacks can correctly infer voice commands over encrypted traffic with 92.89% accuracy on Amazon Echo.

Topics & Concepts

EncryptionComputer scienceEcho (communications protocol)AdversaryVoice command deviceTraffic analysisComputer securitySpeech recognitionComputer networkInternet Traffic Analysis and Secure E-votingDigital Media Forensic DetectionHate Speech and Cyberbullying Detection