Malware Image Classification Using Deep Learning InceptionResNet-V2 and VGG-16 Method

Didih Rizki Chandranegara, Jafar Shodiq Djawas, Faiq Azmi Nurfaizi, Zamah Sari
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引用次数: 1

Abstract

Malware is intentionally designed to damage computers, servers, clients or computer networks. Malware is a general term used to describe any program designed to harm a computer or server. The goal is to commit a crime, such as gaining unauthorized access to a particular system, so as to compromise user security. Most malware still uses the same code to produce another different form of malware variants. Therefore, the ability to classify similar malware variant characteristics into malware families is a good strategy to stop malware. The research is useful for classifying malware on malware samples presented as bytemap grayscale images. The malware classification research focused on 25 malware classes with a total of 9,029 images from the Malimg dataset. This research implements the VGG-16 and InceptionResNet-V2 architectures by running 2 different scenarios, scenario 1 uses the original dataset and the other scenario uses the undersampled dataset. After building the model, each scenario will get an evaluation form such as accuracy, precision, recall, and f1-score. The highest score was obtained in scenario 2 on the VGG-16 method with a score of 94.8% and the lowest in scenario 2 on the InceptionResNet-V2 method with a score of 85.1%.
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基于深度学习InceptionResNet-V2和VGG-16方法的恶意软件图像分类
恶意软件是故意设计来破坏计算机、服务器、客户端或计算机网络的。恶意软件是一个通用术语,用于描述任何旨在损害计算机或服务器的程序。其目标是实施犯罪,例如获得对特定系统的未经授权的访问,从而危及用户安全。大多数恶意软件仍然使用相同的代码来生成另一种不同形式的恶意软件变体。因此,将相似的恶意软件变体特征分类到恶意软件家族中是一种很好的阻止恶意软件的策略。该研究有助于对以字节图灰度图像形式呈现的恶意软件样本进行分类。恶意软件分类研究集中在25个恶意软件类别上,总共有来自Malimg数据集的9029张图像。本研究通过运行2种不同的场景来实现VGG-16和InceptionResNet-V2架构,场景1使用原始数据集,另一个场景使用欠采样数据集。在构建模型之后,每个场景将获得一个评估表单,如准确性、精度、召回率和f1-score。场景2中VGG-16方法得分最高,为94.8%;场景2中InceptionResNet-V2方法得分最低,为85.1%。
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审稿时长
12 weeks
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