Authors
Chris Xiaoxuan Lu, Bowen Du, Xuan Kan, Hongkai Wen, Andrew Markham, Niki Trigoni
Publication date
2017/11/6
Book
Proceedings of the First ACM Workshop on Mobile Crowdsensing Systems and Applications
Pages
68-73
Description
No longer reserved for nerdy geeks, nowadays smartwatches have gain their popularities rapidly, and become one of the most desirable gadgets that the general public would like to own. However, such popularity also introduces potential vulnerability. Until now, the de facto solution to protect smartwatches are passwords, i.e. either PINs or Android Pattern Locks (APLs). Unfortunately, those types of passwords are not robust against various forms of attacks, such as shoulder surfing or touch/motion based side channel attacks. In this paper, we propose a novel authentication approach for smartwatches, which adds another layer of security on top of the traditional passwords by considering the unique motion signatures when different users input passwords on their watches. It uses a deep recurrent neural networks to analyse the subtle motion signals of password input, and distinguish the legitimate users from …
Total citations
20182019202020212022202320243213561
Scholar articles
CX Lu, B Du, X Kan, H Wen, A Markham, N Trigoni - Proceedings of the First ACM Workshop on Mobile …, 2017