Annual Computer Security Applications Conference (ACSAC) 2021

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Global Feature Analysis and Comparative Evaluation of Freestyle In-Air-Handwriting Passcode for User Authentication

Freestyle in-air-handwriting passcode-based user authentication methods address the needs for Virtual Reality (VR) / Augmented Reality (AR) headsets, wearable devices, and game consoles where a physical keyboard cannot be provided for typing a password but a gesture input interface is readily available. Such an authentication system can capture the hand movement of writing a passcode string in the air and verify the user identity using both the writing content (like a password) and the writing style (like a behavior biometric trait). However, distinguishing handwriting signals from different users is challenging in signal processing, feature extraction, and matching. In this paper, we provide a detailed analysis of the global features of in-air-handwriting signals and a comparative evaluation of such a user authentication framework. Also, we build a prototype system with two different types of hand motion capture devices, collect two datasets, and conduct an extensive evaluation.

Duo Lu
Arizona State University

Yuli Deng
Arizona State University

Dijiang Huang
Arizona State University

Paper (ACM DL)

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