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Panorama: Capturing System-wide Information Flow for Malware Detection and Analysis

机译:全景:捕获用于恶意软件检测和分析的系统范围信息流

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Malicious programs spy on users' behavior and compromise their privacy. Even software from reputable vendors, such as Google Desktop and Sony DRM media player, may perform undesirable actions. Unfortunately, existing techniques for detecting malware and analyzing unknown code samples are insufficient and have significant shortcomings. We observe that malicious information access and processing behavior is the fundamental trait of numerous malware categories breaching users' privacy (including keyloggers, password thieves, network sniffers, stealth backdoors, spyware and rootkits), which separates these malicious applications from benign software. We propose a system, Panorama, to detect and analyze malware by capturing this fundamental trait. In our extensive experiments, Panorama successfully detected all the malware samples and had very few false positives. Furthermore, by using Google Desktop as a case study, we show that our system can accurately capture its information access and processing behavior, and we can confirm that it does send back sensitive information to remote servers in certain settings. We believe that a system such as Panorama will offer indispensable assistance to code analysts and malware researchers by enabling them to quickly comprehend the behavior and inner-workings of an unknown sample.
机译:恶意计划间谍对用户的行为并妥协他们的隐私。甚至来自众所周知的供应商的软件,例如Google Desktop和Sony DRM Media Player,可能会履行不良行为。遗憾的是,用于检测恶意软件和分析未知代码样本的现有技术不足并且具有显着的缺点。我们观察到恶意信息访问和处理行为是违反用户隐私的许多恶意软件类别的基本特征(包括键盘,密码盗贼,网络嗅探器,隐形后门,间谍软件和rootkits),它将这些恶意应用程序与良性软件分开。我们提出了一个系统,全景,通过捕获这种基本特征来检测和分析恶意软件。在我们广泛的实验中,全景成功地检测到所有恶意软件样本,并且具有很少的误报。此外,通过使用Google Desktop作为案例研究,我们表明我们的系统可以准确地捕获其信息访问和处理行为,并且我们可以确认它确实在某些设置中向远程服务器发送回敏感信息。我们认为,Panorama等系统将通过使他们能够快速理解未知样本的行为和内部工作来提供对代码分析师和恶意软件研究人员提供不可或缺的援助。

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