Abstract

Personal mobile devices currently have access to a significant portion of their user’s private sensitive data and are increasingly used for processing mobile payments. Consequently, securing access to these mobile devices is a requirement for securing access to the sensitive data and potentially costly services. Face authentication is one of the promising biometrics-based user authentication mechanisms that has been widely available in this era of mobile computing. With a built-in camera capability on smartphones, tablets, and laptops, face authentication provides an attractive alternative of legacy passwords for its memory-less authentication process, which is so sophisticated that it can unlock the device faster than a fingerprint. Nevertheless, face authentication in the context of smartphones has proven to be vulnerable to attacks. In most current implementations, a sufficiently high-resolution face image displayed on another mobile device will be enough to circumvent security measures and bypass the authentication process. In order to prevent such bypass attacks, gesture recognition together with location is proposed to be additionally modeled. Gestures provide a faster and more convenient method of authentication compared to a complex password. The focus of this paper is to build a secure authentication system with face, location and gesture recognition as components. User gestures and location data are a sequence of time series; therefore, in this paper we propose to use unsupervised learning in the long short-term memory recurrent neural network to actively learn to recognize, group and discriminate user gestures and location. Moreover, a clustering-based technique is also implemented for recognizing gestures and location.

Highlights

  • The Internet’s spread as a computer network, driven by its characteristics including its ability to include numerous devices and geographic areas, has changed the way information is spread

  • We suggest a face-authentication system consisting of face, gesture and location recognition as components

  • By adding gesture recognition as a module in the overall authentication system, the reliability of the results derived from this system is further increased

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Summary

Introduction

The Internet’s spread as a computer network, driven by its characteristics including its ability to include numerous devices and geographic areas, has changed the way information is spread. With the increase in functionality of mobile devices, we are transitioning from an Internet society towards a mobile one. Besides offering a huge amount of information and other numerous functionalities, mobile devices contain sensitive user data for personalization of user experience in applications or to offer more efficient services. Controlling access in computer devices through user authentication is one of the means of securing the data that these devices contain

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