基于源代码数据流的移动应用恶意行为检测

Chia-Mei Chen, Je-Ming Lin, G. Lai
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引用次数: 16

摘要

移动设备已经变得强大和流行。大多数互联网应用程序都移植到移动平台上。为了方便,信用卡、密码等个人机密信息都存储在移动设备中。因此,由于经济利益,移动设备成为攻击目标。移动应用程序在许多市场平台上发布而没有经过验证,因此恶意移动应用程序可以在这些市场中部署。两种检测恶意软件的方法,动态和静态分析,在文献中常用。动态分析需要的是分析师在受控的环境中运行可疑的应用程序,观察应用程序的行为,以确定应用程序是否恶意。然而,动态分析是耗时的,因为一些移动应用程序可能会在一定的时间或特殊的输入顺序后被触发。本文采用静态分析的方法检测手机恶意软件,通过跟踪敏感信息来检测是否被恶意软件发布或利用。本文提出了一种基于应用程序反向源代码数据流的移动恶意软件检测方法。该系统通过跟踪数据流来检测和识别Android系统中恶意软件的恶意行为。为了验证系统的性能,使用了来自19个家族的252个恶意软件和来自b谷歌Play的50个免费应用程序。结果表明,该方法可以成功检测Android应用程序的恶意行为,TPR为91.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Mobile Application Malicious Behaviors Based on Data Flow of Source Code
Mobile devices have become powerful and popular. Most Internet applications are ported to mobile platform. Confidential personal information such as credit card and passwords are stored in mobile device for convenience. Therefore, mobile devices become the attack targets due to financial gain. Mobile applications are published in many market platforms without verification, hence malicious mobile applications can be deployed in such marketplaces. Two approaches for detecting malware, dynamic and static analysis, are commonly used in the literature. Dynamic analysis requires is that analyst run suspicious apps in a controlled environment to observe the behavior of apps to determine if the app is malicious or not. However, Dynamic analysis is time consuming, as some mobile application might be triggered after certain amount of time or special input sequence. In this paper static analysis is adopted to detect mobile malware and sensitive information is tracked to check if it is been released or used by malicious malware. In this paper, we present a mobile malware detection approach which is based on data flow of the reversed source code of the application. The proposed system tracks the data flow to detect and identify malicious behavior of malware in Android system. To validate the performance of proposed system, 252 malware form 19 families and 50 free apps from Google Play are used. The results proved that our method can successfully detecting malicious behaviours of Android APPs with the TPR 91.6%.
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