VibPath

Author:

Choi Seokmin1ORCID,Yim Junghwan2ORCID,Kim Se Jun2ORCID,Jin Yincheng1ORCID,Wu Di3ORCID,Jin Zhanpeng4ORCID

Affiliation:

1. University at Buffalo, Department of Computer Science and Engineering, Buffalo, NY, USA

2. University at Buffalo, Department of Computer Science and Engineering, USA

3. Hunan University, School of Design, China

4. South China University of Technology, School of Future Technology, China and University at Buffalo, Department of Computer Science and Engineering, USA

Abstract

Technical advances in the smart device market have fixated smartphones at the heart of our lives, warranting an ever more secure means of authentication. Although most smartphones have adopted biometrics-based authentication, after a couple of failed attempts, most users are given the option to quickly bypass the system with passcodes. To add a layer of security, two-factor authentication (2FA) has been implemented but has proven to be vulnerable to various attacks. In this paper, we introduce VibPath, a simultaneous 2FA scheme that can understand the user's hand neuromuscular system through touch behavior. VibPath captures the individual's vibration path responses between the hand and the wrist with the attention-based encoder-decoder network, authenticating the genuine users from the imposters unobtrusively. In a user study with 30 participants, VibPath achieved an average performance of 0.98 accuracy, 0.99 precision, 0.98 recall, 0.98 f1-score for user verification, and 94.3% accuracy for user identification across five passcodes. Furthermore, we also conducted several extensive studies, including in-the-wile, permanence, vulnerability, usability, and system overhead studies, to assess the practicability and viability of the VibPath from multiple aspects.

Funder

Guangdong Provincial Key Laboratory of Human Digital Twin

Shenzhen Holdfound Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference78 articles.

1. 2022. Smartwatch Market Size Share COVID-19 Impact Analysis By Operating System (IOS Android and Others) By End-User (Male and Female) By Application(Running Checking Notifications Swimming Cycling and Others) and Regional Forecast 2021-2028. https://www.fortunebusinessinsights.com/smartwatch-market-106625 2022. Smartwatch Market Size Share COVID-19 Impact Analysis By Operating System (IOS Android and Others) By End-User (Male and Female) By Application(Running Checking Notifications Swimming Cycling and Others) and Regional Forecast 2021-2028. https://www.fortunebusinessinsights.com/smartwatch-market-106625

2. Kamran Ali and Alex X Liu . 2021. Fine-grained Vibration Based Sensing Using a Smartphone . IEEE Transactions on Mobile Computing ( 2021 ). Kamran Ali and Alex X Liu. 2021. Fine-grained Vibration Based Sensing Using a Smartphone. IEEE Transactions on Mobile Computing (2021).

3. Whole-Body Vibration and the Prevention and Treatment of Delayed-Onset Muscle Soreness

4. Apple. 2017. About Touch ID advanced security technology. https://support.apple.com/en-us/HT204587 Apple. 2017. About Touch ID advanced security technology. https://support.apple.com/en-us/HT204587

5. Camera Based Two Factor Authentication Through Mobile and Wearable Devices

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