Internet of Things devices have seen a rapid growth and popularity in recent years with many more ordinary devices gaining network capability and becoming part of the ever growing IoT network. With this exponential growth and the limitation of resources, it is becoming increasingly harder to protect against security threats such as malware due to its evolving faster than the defence mechanisms can handle with. The traditional security systems are not able to detect unknown malware as they use signature-based methods. In this paper, we aim to address this issue by introducing a novel IoT malware traffic analysis approach using neural network and binary visualisation. The prime motivation of the proposed approach is to faster detect and classify new malware (zero-day malware). The experiment results show that our method can satisfy the accuracy requirement of practical application.
翻译:近年来,随着许多更普通的装置获得网络能力并成为不断扩大的IOT网络的一部分,Tempic设备在最近几年中迅速增长和普及。随着这种指数增长和资源限制,由于恶意软件的演变速度快于国防机制所能应付的,越来越难以防范这种安全威胁,如恶意软件。传统安全系统无法发现使用签名方法的未知恶意软件。在本文件中,我们的目标是通过采用神经网络和二元视觉化的新型IOT恶意软件流量分析方法来解决这一问题。拟议方法的主要动机是更快地发现和分类新的恶意软件(零日恶意软件)。实验结果表明,我们的方法能够满足实际应用的准确性要求。