Wi-Sign: Device-Free Second Factor User Authentication
Title | Wi-Sign: Device-Free Second Factor User Authentication |
Publication Type | Conference Paper |
Year of Publication | 2018 |
Authors | Shah, Syed W., Kanhere, Salil S. |
Conference Name | Proceedings of the 15th EAI International Conference on Mobile and Ubiquitous Systems: Computing, Networking and Services |
Publisher | ACM |
Conference Location | New York, NY, USA |
ISBN Number | 978-1-4503-6093-7 |
Keywords | CSI, Human Behavior, human factors, pubcrawl, Second Factor Authentication, Two factor Authentication, WiFi |
Abstract | Most two-factor authentication (2FA) implementations rely on the user possessing and interacting with a secondary device (e.g. mobile phone) which has contributed to the lack of widespread uptake. We present a 2FA system, called Wi-Sign that does not rely on a secondary device for establishing the second factor. The user is required to sign at a designated place on the primary device with his finger following a successful first step of authentication (i.e. username + password). Wi-Sign captures the unique perturbations in the WiFi signals incurred due to the hand motion while signing and uses these to establish the second factor. Wi-Sign detects these perturbations by measuring the fine-grained Channel State Information (CSI) of the ambient WiFi signals at the device from which log-in attempt is being made. The logic is that, the user's hand geometry and the way he moves his hand while signing cause unique perturbations in CSI time-series. After filtering noise from the CSI data, principal component analysis is employed for compressing the CSI data. For segmentation of sign related perturbations, Wi-Sign utilizes the thresholding approach based on the variance of the first-order difference of the selected principal component. Finally, the authentication decision is made by feeding scrupulously selected features to a One-Class SVM classifier. We implement Wi-Sign using commodity off-the-shelf 802.11n devices and evaluate its performance by recruiting 14 volunteers. Our evaluation shows that Wi-Sign can on average achieve 79% TPR. Moreover, Wi-Sign can detect attacks with an average TNR of 86%. |
URL | https://dl.acm.org/citation.cfm?doid=3286978.3286994 |
DOI | 10.1145/3286978.3286994 |
Citation Key | shah_wi-sign:_2018 |