FMCode: A 3D In-the-Air Finger Motion Based User Login Framework for Gesture Interface
Duo Lu, Dijiang Huang

TL;DR
FMCode introduces a novel 3D in-air-handwriting user login framework using machine learning, achieving high accuracy and robustness, suitable for gesture-based human-computer interfaces.
Contribution
The paper presents a unified gesture-based login system with new features and deep learning models, improving security and accuracy over existing methods.
Findings
Achieves 0.1% EER in user authentication
96.7% accuracy in user identification
Effective against client-side spoofing attacks
Abstract
Applications using gesture-based human-computer interface require a new user login method with gestures because it does not have a traditional input method to type a password. However, due to various challenges, existing gesture-based authentication systems are generally considered too weak to be useful in practice. In this paper, we propose a unified user login framework using 3D in-air-handwriting, called FMCode. We define new types of features critical to distinguish legitimate users from attackers and utilize Support Vector Machine (SVM) for user authentication. The features and data-driven models are specially designed to accommodate minor behavior variations that existing gesture authentication methods neglect. In addition, we use deep neural network approaches to efficiently identify the user based on his or her in-air-handwriting, which avoids expansive account database search…
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Taxonomy
TopicsUser Authentication and Security Systems · Biometric Identification and Security · Deception detection and forensic psychology
