选择检测机制及其在虚拟机中的应用

I. Vasiliev, V. Makarov, P. Dovgalyuk, M. Klimushenkova
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引用次数: 0

摘要

在现有的软件分析方法中,有一种方法非常突出:动态二进制分析,使用动态二进制检测(DBI)实现。检测允许通过在检查的代码流中插入用户定义的指令来执行分析。DBI框架允许在没有原始源代码的情况下执行分析,并提供随时更改和补充分析条件的功能。这些功能提供对任何复杂性和任何软件的执行分析。然而,动态二进制工具的分析质量和易用性直接取决于所选框架中实现的功能。允许方便的分析过程的关键特性之一是可以指定和缩小检测目标,从操作系统到更小和更精确的系统实体,如:进程,线程,内存范围。这种能力被称为选择性仪器。有了这个特性,分析人员可以在整个系统检测和选择性检测之间自由切换,这允许在使用相同框架的情况下从两种方法中获益。整个系统检测提供了对系统中所有正在运行的应用程序和系统本身的最全面的概述。然而,缺点是分析系统的速度明显变慢,这可能导致系统故障,并且需要处理和分析的数据量过多。选择性检测允许指定分析例程感兴趣的区域。这可以在适当的时间针对特定实体执行,从而根据目标提供更准确的结果。在本文中,我们将浏览现有的选择性仪器检测方法,并定义它们的缺陷。然后,我们将提出一种检测进程、线程、光纤和内存的方法,并将描述ARM和x86架构的测试实现。在本文的最后一部分,我们将描述已开发的选择性仪器方法的应用实例。
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Selective Instrumentation Mechanism and its Application in a Virtual Machine
Among existing approaches to software analysis one stands out: dynamic binary analysis, implemented with dynamic binary instrumentation (DBI). Instrumentation allows to perform analysis by inserting user-defined instructions into examined code flow. DBI frameworks allows to perform analysis in the absence of original source code, as well as providing functionality to change and supplement analysis conditions on-the-go. These capabilities provide performing analysis of any complexity and for any software. However, analysis quality and ease of use of dynamic binary instrumentation directly depends on implemented functionality in a chosen framework. One of the key features, allowing convenient analysis process is a possibility to specify and to narrow instrumentation target from operating system to smaller and more precise entities in system, like: process, thread, memory range. This ability is called selective instrumentation. Having this feature analyst may switch freely between whole system instrumentation and selective instrumentation both ways, which allows to benefit from both approaches while using the same framework. Whole system instrumentation affords the most comprehensive overview of all running applications in the system and the system itself. However the downside is a noticeable slowdown of the analyzed system, which can lead to malfunctioning of the system, and excessive amount of data that needs to be processed and analyzed. Selective instrumentation allows one to specify the area of interest for analysis routines. This can be performed at the right time and for specific entities, which provides a more accurate result depending on the goals. In this paper we are going to look through existing approaches for selective instrumentation and define their flaws. Then we will propose an approach for instrumentation of processes, threads, fibers and memory, and will describe test implementation for ARM and x86 architectures. In the last part of the paper we will describe application examples of developed selective instrumentation approaches.
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