Malware Classification using Malware Visualization and Deep Learning

Prabhpreet Singh, Priyanshu, Aruna Bhat
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Abstract

The presence of malware and potential attack has posed a threat to cyber security. The potential challenges in malware detection is that the increasing number and variety of unknown malware makes it impossible to identify its existence. This research study has proposed a novel method for categorizing malware executables based on their visual representation by converting the malware binaries to grayscale images and then classifying them using CNN. The main objective of this research work is to employ several models, which will then be used to perform a comparison study on various outcomes to demonstrate the applicability of utilizing the described approaches to visually categorize the malware.
基于恶意软件可视化和深度学习的恶意软件分类
恶意软件和潜在攻击的存在对网络安全构成了威胁。恶意软件检测的潜在挑战是,未知恶意软件的数量和种类不断增加,使得无法识别其存在。本研究提出了一种基于视觉表现对恶意软件可执行文件进行分类的新方法,将恶意软件二进制文件转换为灰度图像,然后使用CNN对其进行分类。本研究工作的主要目的是采用几个模型,然后将其用于对各种结果进行比较研究,以证明利用所描述的方法对恶意软件进行可视化分类的适用性。
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