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HelDroid: Dissecting and Detecting Mobile Ransomware

机译:HelDroid:剖析和检测移动勒索软件

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In ransomware attacks, the actual target is the human, as opposed to the classic attacks that abuse the infected devices (e.g., botnet renting, information stealing). Mobile devices are by no means immune to ransomware attacks. However, there is little research work on this matter and only traditional protections are available. Even state-of-the-art mobile malware detection approaches are ineffective against ransomware apps because of the subtle attack scheme. As a consequence, the ample attack surface formed by the billion mobile devices is left unprotected. First, in this work we summarize the results of our analysis of the existing mobile ransomware families, describing their common characteristics. Second, we present HelDroid, a fast, efficient and fully automated approach that recognizes known and unknown scareware and ransomware samples from goodware. Our approach is based on detecting the "building blocks" that are typically needed to implement a mobile ransomware application. Specifically, HelDroid detects, in a generic way, if an app is attempting to lock or encrypt the device without the user's consent, and if ransom requests are displayed on the screen. Our technique works without requiring that a sample of a certain family is available beforehand. We implemented HelDroid and tested it on real-world Android ransomware samples. On a large dataset comprising hundreds of thousands of APKs including goodware, malware, scareware, and ransomware, HelDroid exhibited nearly zero false positives and the capability of recognizing unknown ransomware samples.
机译:在勒索软件攻击中,实际目标是人,而不是滥用受感染设备的经典攻击(例如,僵尸网络租用,信息窃取)。移动设备绝对不受勒索软件攻击。但是,对此问题的研究很少,只有传统的保护措施可用。由于存在细微的攻击方案,即使是最先进的移动恶意软件检测方法也无法有效抵御勒索软件。结果,由十亿个移动设备形成的足够的攻击面没有受到保护。首先,在这项工作中,我们总结了对现有移动勒索软件系列的分析结果,并描述了它们的共同特征。其次,我们介绍HelDroid,这是一种快速,高效且全自动的方法,可从良件中识别已知和未知的恐吓软件和勒索软件样本。我们的方法基于检测实现移动勒索软件应用程序通常所需的“构建块”。具体地说,HelDroid以通用的方式检测应用是否在未经用户同意的情况下试图锁定或加密设备,以及是否在屏幕上显示了赎金请求。我们的技术无需事先提供某个家庭的样本即可工作。我们实施了HelDroid,并在真实的Android勒索软件示例中对其进行了测试。在包含成千上万个APK的大型数据集上,包括好软件,恶意软件,恐吓软件和勒索软件,HelDroid表现出几乎零的误报率和识别未知勒索软件样本的能力。

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