Karonte: Detecting Insecure Multi-binary Interactions in Embedded Firmware

Nilo Redini, Aravind Machiry, Ruoyu Wang, Chad Spensky, Andrea Continella, Yan Shoshitaishvili, C. Kruegel, G. Vigna
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引用次数: 52

Abstract

Low-power, single-purpose embedded devices (e.g., routers and IoT devices) have become ubiquitous. While they automate and simplify many aspects of users’ lives, recent large-scale attacks have shown that their sheer number poses a severe threat to the Internet infrastructure. Unfortunately, the software on these systems is hardware-dependent, and typically executes in unique, minimal environments with non-standard configurations, making security analysis particularly challenging. Many of the existing devices implement their functionality through the use of multiple binaries. This multi-binary service implementation renders current static and dynamic analysis techniques either ineffective or inefficient, as they are unable to identify and adequately model the communication between the various executables. In this paper, we present Karonte, a static analysis approach capable of analyzing embedded-device firmware by modeling and tracking multi-binary interactions. Our approach propagates taint information between binaries to detect insecure interactions and identify vulnerabilities. We first evaluated Karonte on 53 firmware samples from various vendors, showing that our prototype tool can successfully track and constrain multi-binary interactions. This led to the discovery of 46 zero-day bugs. Then, we performed a large-scale experiment on 899 different samples, showing that Karonte scales well with firmware samples of different size and complexity.
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在嵌入式固件中检测不安全的多二进制交互
低功耗、单一用途的嵌入式设备(如路由器和物联网设备)已经无处不在。虽然它们自动化并简化了用户生活的许多方面,但最近的大规模攻击表明,它们的数量之多对互联网基础设施构成了严重威胁。不幸的是,这些系统上的软件依赖于硬件,并且通常在具有非标准配置的独特最小环境中执行,这使得安全性分析特别具有挑战性。许多现有设备通过使用多个二进制文件来实现其功能。这种多二进制服务实现使得当前的静态和动态分析技术要么无效,要么效率低下,因为它们无法识别和充分建模各种可执行文件之间的通信。在本文中,我们提出了Karonte,一种能够通过建模和跟踪多二进制交互来分析嵌入式设备固件的静态分析方法。我们的方法在二进制文件之间传播污染信息,以检测不安全的交互并识别漏洞。我们首先在来自不同供应商的53个固件样本上对Karonte进行了评估,结果表明我们的原型工具可以成功地跟踪和约束多二进制交互。这导致发现了46个零日漏洞。然后,我们在899个不同的样本上进行了大规模实验,结果表明Karonte可以很好地适应不同大小和复杂程度的固件样本。
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