Tracking payment card data flow using virtual machine state introspection

Jennia Hizver, T. Chiueh
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引用次数: 6

Abstract

Credit and debit card payment processing systems are key elements in financial transactions. Negligence in securing these systems makes them vulnerable to hacking attacks, which may lead to significant monetary losses for both merchants and the financial organizations. To reduce this risk, mandatory security compliance regulations, such as the Payment Card Industry Data Security Standard (PCI DSS), were developed and adopted by the industry. A key pre-requisite of the PCI DSS compliance process is the ability to identify the components of the payment systems directly involved with the card data (i.e. process, transmit, or store). However, existing data flow tracking tools cannot fully automate the process of identifying system components that touch card data, because they either can not examine encrypted communications or they use an instrumentation-based approach and thus require a priori detailed knowledge of the payment card processing systems. We describe the implementation and evaluation of a novel tool to identify the card data flow in commercial payment card processing systems running on virtualized servers. The tool performs realtime monitoring of network communications between virtual machines and inspects the memory of the communicating processes for unencrypted card data. Our implementation does not require instrumentation of application binaries and can accurately identify the system components involved in card data flow even when the communications among system components are encrypted. Effectiveness of this tool is demonstrated through its successful discovery of the card data flow of several open- and closed-source payment card processing applications.
使用虚拟机状态自省跟踪支付卡数据流
信用卡和借记卡支付处理系统是金融交易的关键要素。对这些系统的保护疏忽使它们容易受到黑客攻击,这可能会给商家和金融机构带来重大的经济损失。为了降低这种风险,业界开发并采用了强制性的安全遵从性法规,例如支付卡行业数据安全标准(PCI DSS)。PCI DSS合规过程的一个关键先决条件是能够识别与卡数据直接相关的支付系统组件(即处理、传输或存储)。然而,现有的数据流跟踪工具不能完全自动化识别接触卡数据的系统组件的过程,因为它们要么不能检查加密通信,要么使用基于仪器的方法,因此需要预先了解支付卡处理系统的详细知识。我们描述了在虚拟化服务器上运行的商业支付卡处理系统中识别卡数据流的新工具的实现和评估。该工具执行虚拟机之间网络通信的实时监控,并检查通信进程的内存中未加密的卡数据。我们的实现不需要应用程序二进制文件的检测,即使在系统组件之间的通信被加密的情况下,也可以准确地识别卡数据流中涉及的系统组件。该工具的有效性通过它成功地发现了几个开放和封闭源支付卡处理应用程序的卡片数据流来证明。
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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