Title
Personal PIN Leakage from Wearable Devices.
Abstract
The proliferation of wearable devices, e.g., smartwatches and activity trackers, with embedded sensors has already shown its great potential on monitoring and inferring human daily activities. This paper reveals a serious security breach of wearable devices in the context of divulging secret information (i.e., key entries) while people are accessing key-based security systems. Existing methods of obtaining such secret information rely on installations of dedicated hardware (e.g., video camera or fake keypad), or training with labeled data from body sensors, which restrict use cases in practical adversary scenarios. In this work, we show that a wearable device can be exploited to discriminate mm-level distances and directions of the user's fine-grained hand movements, which enable attackers to reproduce the trajectories of the user's hand and further to recover the secret key entries. In particular, our system confirms the possibility of using embedded sensors in wearable devices, i.e., accelerometers, gyroscopes, and magnetometers, to derive the moving distance of the user's hand between consecutive key entries regardless of the pose of the hand. Our Backward PIN-Sequence Inference algorithm exploits the inherent physical constraints between key entries to infer the complete user key entry sequence. Extensive experiments are conducted with over 7,000 key entry traces collected from 20 adults for key-based security systems (i.e., ATM keypads and regular keyboards) through testing on different kinds of wearables. Results demonstrate that such a technique can achieve 80 percent accuracy with only one try and more than 90 percent accuracy with three tries. Moreover, the performance of our system is consistently good even under low sampling rate and when inferring long PIN sequences. To the best of our knowledge, this is the first technique that reveals personal PINs leveraging wearable devices without the need for labeled training data and contextual information.
Year
DOI
Venue
2018
10.1109/TMC.2017.2737533
IEEE Trans. Mob. Comput.
Keywords
Field
DocType
Pins,Security,Wearable sensors,Keyboards,Mobile computing,Inference algorithms
Mobile computing,Keypad,Use case,Computer science,Wearable computer,Activity tracker,Computer network,Human–computer interaction,Video camera,Wearable technology,Smartwatch
Journal
Volume
Issue
ISSN
17
3
1536-1233
Citations 
PageRank 
References 
1
0.41
0
Authors
5
Name
Order
Citations
PageRank
Chen Wang1716.39
Xiaonan Guo285.27
Yingying Chen32495193.14
Yan Wang481140.19
Bo Liu5402.56