DeFFusion: CNN-based Continuous Authentication Using Deep Feature Fusion

Author:

Li Yantao1ORCID,Tao Peng1,Deng Shaojiang1,Zhou Gang2ORCID

Affiliation:

1. Chongqing University, Chongqing, China

2. Department of Computer Science, William & Mary, Williamsburg, USA

Abstract

Smartphones have become crucial and important in our daily life, but the security and privacy issues have been major concerns of smartphone users. In this article, we present DeFFusion, a CNN-based continuous authentication system using Deep Feature Fusion for smartphone users by leveraging the accelerometer and gyroscope ubiquitously built into smartphones. With the collected data, DeFFusion first converts the time domain data into frequency domain data using the fast Fourier transform and then inputs both of them into a designed CNN, respectively. With the CNN-extracted features, DeFFusion conducts the feature selection utilizing factor analysis and exploits balanced feature concatenation to fuse these deep features. Based on the one-class SVM classifier, DeFFusion authenticates current users as a legitimate user or an impostor. We evaluate the authentication performance of DeFFusion in terms of impact of training data size and time window size, accuracy comparison on different features over different classifiers and on different classifiers with the same CNN-extracted features, accuracy on unseen users, time efficiency, and comparison with representative authentication methods. The experimental results demonstrate that DeFFusion has the best accuracy by achieving the mean equal error rate of 1.00% in a 5-second time window size.

Funder

National Natural Science Foundation of China

Fundamental Research Funds for the Central Universities

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference58 articles.

1. Facebook usage on smartphones and gray matter volume of the nucleus accumbens;Montag Christian;Behav. Brain Res.,2017

2. A survey on smartphones security: Software vulnerabilities, malware, and attacks;Ahvanooey Milad Taleby;Int. J. Adv. Comput. Sci. Appl.,2017

3. Analyzing user awareness of privacy data leak in mobile applications;Kim Youngho;Mob. Inf. Syst,2015

4. Continuous user authentication on mobile devices: Recent progress and remaining challenges;Patel Vishal M.;IEEE Signal Process. Mag.,2016

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