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首页> 外文期刊>Wireless personal communications: An Internaional Journal >Detection of Malicious Activities in Internet of Things Environment Based on Binary Visualization and Machine Intelligence
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Detection of Malicious Activities in Internet of Things Environment Based on Binary Visualization and Machine Intelligence

机译:基于二进制可视化和机器智能,检测物联网环境中的恶意活动

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摘要

Internet of Things (IoT) devices are increasingly deployed for different purposes such as data sensing, collecting and controlling. IoT improves user experiences by allowing a large number of smart devices to connect and share information. Many existing malware attacks, targeted at traditional computers connected to the Internet, may also be directed at IoT devices. Therefore, efficient protection at IoT devices could save millions of internet users from malicious activities. However, existing malware detection approaches suffer from high computational complexity. In this study, we propose a more accurate and fast model for detecting malware in the IoT environment. We introduce a Malware Threat Hunting System (MTHS) in the proposed model. MTHS first converts malware binary into a color image and then conducts the machine or deep learning analysis for efficient malware detection. We finally prepare a baseline to compare the performance of MTHS with traditional state-of-the-art malware detection approaches. We conduct experiments on two public datasets of Windows and Android software. The experimental results indicate that the response time and the detection accuracy of MTHS are better than those of previous machine learning and deep learning approaches.
机译:物联网(IOT)设备越来越多地部署用于不同的目的,例如数据感测,收集和控制。 IoT通过允许大量智能设备来改善用户体验来连接和共享信息。许多现有的恶意软件攻击,目标在连接到Internet的传统计算机上,也可以针对IOT设备。因此,在物联网设备上有效的保护可以将数百万个互联网用户免于恶意活动。然而,现有的恶意软件检测方法遭受高计算复杂性。在这项研究中,我们提出了一种更准确和快速的模型,用于检测IOT环境中的恶意软件。我们在拟议的模型中引入恶意软件威胁狩猎系统(MTH)。 MTH首先将恶意软件二进制转换为彩色图像,然后为有效的恶意软件检测进行机器或深度学习分析。我们终于准备了一个基线,以比较MTH与传统的最先进的恶意软件检测方法的性能。我们在Windows和Android软件的两个公共数据集上进行实验。实验结果表明,MTH的响应时间和检测精度优于先前的机器学习和深度学习方法。

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