基于深度学习神经网络的防橡皮鸭攻击智能系统

A. Tyutyunnik, A. Lazarev
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引用次数: 0

摘要

在信息技术领域的硬件和软件发展的现阶段,信息安全占据了重要的地位,这意味着使用额外的手段来确保目标系统的最终用户的机密数据的安全处理。现有电子计算机的主要问题是硬件端口不受外部影响的保护不足。这种漏洞的一个例子是来自hak5的USB Rubber Ducky硬件和软件安全解决方案,它通过模拟外围设备来利用漏洞在目标机器上执行未经授权的操作。Offensive Security的先进、类似的解决方案允许复杂的目标机拦截和远程控制目标机,强调了手头问题的紧迫性。为了解决这一问题,开发了一个智能系统来评估和计算连接外围设备的状态,特别是评估外围设备参数输入组的可比性。为了提高安全性,将深度学习人工神经网络过程集成到所实现的系统中。基于用户行为——软件处理调用速度、用户错误和现有的各种漏洞利用模式——它可以识别出有潜在危险的设备,然后从硬件上断开USB端口。人工神经网络基于用户行为模式的学习功能也允许在没有活跃账户的情况下进行个人识别,这对系统安全性具有积极影响。该系统的一个重要特性是能够使用Telegram API与系统进行远程交互。
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Intelligent System for Preventing Rubber Ducky Attacks Using Deep Learning Neural Networks
At the present stage of development of hardware and software in the field of information technology an important place is occupied by information security, which implies the use of additional means to ensure secure processing of confidential data of end-users of target systems. The main problem, allocated in existing electronic computers, is insufficient protection of hardware ports from external influences. An example of such vulnerabilities is the USB Rubber Ducky hardware and software security solution from hak5 that exploits vulnerabilities by emulating peripherals to perform unauthorised actions on the target machine. Offensive Security's advanced, similar solutions allow complex target machine interception and remote control of the target machine, underscoring the urgency of the problem at hand. To solve this problem, an intelligent system was developed to evaluate and calculate the states of connected peripheral devices, in particular, to evaluate the comparability of input groups of peripheral device parameters. To improve security, a deep learning artificial neural network process was integrated into the implemented system. Based on user actions – software processing call speed, user errors and existing exploitation patterns of variant vulnerabilities – it can identify a device as potentially dangerous and then hardware disconnect the USB port. The artificial neural network's learning functionality based on user behaviour patterns also allowed for personal identification without an active account, which has a positive impact on system security. An important feature of the system is also the ability to interact with the system remotely using the Telegram API.
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