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Memory Heat Map: Anomaly detection in real-time embedded systems using memory behavior

机译:内存热图:使用内存行为在实时嵌入式系统中进行异常检测

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In this paper, we introduce a novel mechanism that identifies abnormal system-wide behaviors using the predictable nature of real-time embedded applications. We introduce Memory Heat Map (MHM) to characterize the memory behavior of the operating system. Our machine learning algorithms automatically (a) summarize the information contained in the MHMs and then (b) detect deviations from the normal memory behavior patterns. These methods are implemented on top of a multicore processor architecture to aid in the process of monitoring and detection. The techniques are evaluated using multiple attack scenarios including kernel rootkits and shellcode. To the best of our knowledge, this is the first work that uses aggregated memory behavior for detecting system anomalies especially the concept of memory heat maps.
机译:在本文中,我们介绍了一种新颖的机制,该机制利用实时嵌入式应用程序的可预测性来识别系统范围内的异常行为。我们引入了内存热图(MHM)来表征操作系统的内存行为。我们的机器学习算法会自动(a)汇总MHM中包含的信息,然后(b)检测与正常内存行为模式的差异。这些方法是在多核处理器体系结构之上实现的,以帮助进行监视和检测过程。使用多种攻击方案(包括内核rootkit和shellcode)对这些技术进行了评估。据我们所知,这是使用聚合内存行为检测系统异常(尤其是内存热图的概念)的第一项工作。

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