Prevent Data Exfiltration on Smart Phones Using Audio Distortion and Machine Learning

Menaka Moonamaldeniya, V.R.S.C. Priyashantha, M. Gunathilake, Y.M.P.B. Ransinghe, A. Ratnayake, P. Abeygunawardhana
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Abstract

Attacks on mobile devices have gained a significant amount of attention lately. This is because more and more individuals are switching to smartphones from traditional non-smartphones. Therefore, attackers or cybercriminals are now getting on the bandwagon to have an opportunity at obtaining information stored on smartphones. In this paper, we present an Android mobile application that will aid to minimize data exfiltration from attacks, such as, Acoustic Side-Channel Attack, Clipboard Jacking, Permission Misuse and Malicious Apps. This paper will commence its inception with an introduction explaining the current issues in general and how attacks such as side-channel attacks and clipboard jacking paved the way for data exfiltration. We will also discuss a few already existing solutions that try to mitigate these problems. Moving on to the methodology we will emphasize how we came about the solution and what methods we followed to achieve the end goal of securing the smartphone. In the final section, we will discuss the outcomes of the project and conclude what needs to be done in the future to enhance this project so that this mobile application will continue to keep the user's data safe from the criminals' grasps.
使用音频失真和机器学习防止智能手机上的数据泄露
最近,针对移动设备的攻击引起了大量关注。这是因为越来越多的人从传统的非智能手机转向智能手机。因此,攻击者或网络罪犯现在正在赶时髦,有机会获得存储在智能手机上的信息。在本文中,我们提出了一个Android移动应用程序,将有助于减少攻击的数据泄露,如声学侧信道攻击,剪贴板劫持,权限滥用和恶意应用程序。本文将首先介绍当前的问题,以及诸如侧信道攻击和剪贴板劫持之类的攻击如何为数据泄露铺平道路。我们还将讨论一些试图缓解这些问题的现有解决方案。接下来是方法论,我们将强调我们是如何想出解决方案的,以及我们遵循了哪些方法来实现保护智能手机的最终目标。在最后一节,我们将讨论项目的成果,并总结未来需要做些什么来加强这个项目,使这个移动应用程序将继续保持用户的数据安全,不被犯罪分子掌握。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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