Betalogger: Smartphone Sensor-based Side-channel Attack Detection and Text Inference Using Language Modeling and Dense MultiLayer Neural Network

Author:

Javed Abdul Rehman1,Rehman Saif Ur1,Khan Mohib Ullah2,Alazab Mamoun3,Khan Habib Ullah4

Affiliation:

1. Air University, Islamabad, Pakistan

2. University of Wah, Islamabad, Pakistan

3. Charles Darwin University, Australia

4. Qatar University, Qatar

Abstract

With the recent advancement of smartphone technology in the past few years, smartphone usage has increased on a tremendous scale due to its portability and ability to perform many daily life tasks. As a result, smartphones have become one of the most valuable targets for hackers to perform cyberattacks, since the smartphone can contain individuals’ sensitive data. Smartphones are embedded with highly accurate sensors. This article proposes BetaLogger , an Android-based application that highlights the issue of leaking smartphone users’ privacy using smartphone hardware sensors (accelerometer, magnetometer, and gyroscope). BetaLogger efficiently infers the typed text (long or short) on a smartphone keyboard using Language Modeling and a Dense Multi-layer Neural Network (DMNN). BetaLogger is composed of two major phases: In the first phase, Text Inference Vector is given as input to the DMNN model to predict the target labels comprising the alphabet, and in the second phase, sequence generator module generate the output sequence in the shape of a continuous sentence. The outcomes demonstrate that BetaLogger generates highly accurate short and long sentences, and it effectively enhances the inference rate in comparison with conventional machine learning algorithms and state-of-the-art studies.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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1. Active Learning for Detecting Hardware Sensors-Based Side-Channel Attack on Smartphone;Arabian Journal for Science and Engineering;2024-04-22

2. A profiled side‐channel attack detection using deep learning model with capsule auto‐encoder network;Transactions on Emerging Telecommunications Technologies;2024-04

3. Are We Aware? An Empirical Study on the Privacy and Security Awareness of Smartphone Sensors;Studies in Computational Intelligence;2024

4. Robust Anomaly Detection in Network Traffic using Deep Learning Models;2023 IEEE International Conference on ICT in Business Industry & Government (ICTBIG);2023-12-08

5. Automatic Resource Augmentation for Machine Translation in Low Resource Language: EnIndic Corpus;ACM Transactions on Asian and Low-Resource Language Information Processing;2023-08-31

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