PatternListener: Cracking Android Pattern Lock Using Acoustic Signals
Man Zhou, Qian Wang, Jingxiao Yang, Qi Li, Feng Xiao, Zhibo Wang,, Xiaofeng Chen

TL;DR
PatternListener is an acoustic attack that uses imperceptible sounds to accurately crack Android pattern locks by analyzing reflected signals, achieving over 90% success within five attempts.
Contribution
This work introduces a novel acoustic-based method to infer Android pattern locks, bypassing physical proximity and network manipulation limitations of prior attacks.
Findings
Achieves over 90% success rate within five attempts
Effectively infers patterns using only device speakers and microphones
Works reliably across 130 tested patterns
Abstract
Pattern lock has been widely used for authentication to protect user privacy on mobile devices (e.g., smartphones and tablets). Given its pervasive usage, the compromise of pattern lock could lead to serious consequences. Several attacks have been constructed to crack the lock. However, these approaches require the attackers to either be physically close to the target device or be able to manipulate the network facilities (e.g., WiFi hotspots) used by the victims. Therefore, the effectiveness of the attacks is significantly impacted by the environment of mobile devices. Also, these attacks are not scalable since they cannot easily infer unlock patterns of a large number of devices. Motivated by an observation that fingertip motions on the screen of a mobile device can be captured by analyzing surrounding acoustic signals on it, we propose PatternListener, a novel acoustic attack that…
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Taxonomy
TopicsAdvanced Malware Detection Techniques · User Authentication and Security Systems · Digital and Cyber Forensics
