UNVEIL: A large-scale, automated approach to detecting ransomware (keynote)

E. Kirda
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引用次数: 358

Abstract

Although the concept of ransomware is not new (i.e., such attacks date back at least as far as the 1980s), this type of malware has recently experienced a resurgence in popularity. In fact, in the last few years, a number of high-profile ransomware attacks were reported, such as the large-scale attack against Sony that prompted the company to delay the release of the film "The Interview." Ransomware typically operates by locking the desktop of the victim to render the system inaccessible to the user, or by encrypting, overwriting, or deleting the user's files. However, while many generic malware detection systems have been proposed, none of these systems have attempted to specifically address the ransomware detection problem. In this paper, we present a novel dynamic analysis system called UNVEIL that is specifically designed to detect ransomware. The key insight of the analysis is that in order to mount a successful attack, ransomware must tamper with a user's files or desktop. UNVEIL automatically generates an artificial user environment, and detects when ransomware interacts with user data. In parallel, the approach tracks changes to the system's desktop that indicate ransomware-like behavior. Our evaluation shows that UNVEIL significantly improves the state of the art, and is able to identify previously unknown evasive ransomware that was not detected by the antimalware industry.
揭幕:一种大规模、自动化的检测勒索软件的方法(主题演讲)
虽然勒索软件的概念并不新鲜(也就是说,这种攻击至少可以追溯到20世纪80年代),但这种类型的恶意软件最近又重新流行起来。事实上,在过去的几年里,有许多引人注目的勒索软件攻击被报道出来,比如对索尼的大规模攻击,导致该公司推迟了电影《采访》的上映。勒索软件通常通过锁定受害者的桌面来使用户无法访问系统,或者通过加密、覆盖或删除用户的文件来操作。然而,虽然已经提出了许多通用的恶意软件检测系统,但这些系统都没有试图专门解决勒索软件检测问题。在本文中,我们提出了一种新的动态分析系统,称为“揭开”,专门用于检测勒索软件。该分析的关键见解是,为了成功发动攻击,勒索软件必须篡改用户的文件或桌面。“揭开面纱”自动生成人工用户环境,并检测勒索软件何时与用户数据交互。与此同时,该方法还可以跟踪显示类似勒索软件行为的系统桌面变化。我们的评估表明,“揭开面纱”显著提高了技术水平,能够识别反恶意软件行业未检测到的以前未知的规避勒索软件。
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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