针对基于图像的恶意软件分类系统的对抗性示例

Bao Ngoc Vi, H. Nguyen, N. Nguyen, Cao Truong Tran
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引用次数: 3

摘要

恶意软件已成为威胁计算机安全的紧迫问题,因此恶意软件自动分类技术越来越受到人们的重视。近年来,计算机视觉的深度学习(DL)技术已成功地应用于恶意软件分类,将恶意软件文件可视化,然后利用深度学习对可视化图像进行分类。尽管基于dl的分类系统已被证明比传统的分类系统要准确得多,但这些系统已被证明容易受到对抗性攻击。然而,很少有研究考虑对抗性攻击对基于可视化图像的恶意软件分类系统的危险。本文提出了一种基于梯度的对抗性攻击方法,通过在PE文件的资源截面上引入扰动来攻击基于图像的恶意软件分类系统。在Malimg数据集上的实验结果表明,在干扰很小的情况下,该方法能够在挑战卷积神经网络恶意软件分类器时取得攻击成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adversarial Examples Against Image-based Malware Classification Systems
Malicious software, known as malware, has become urgently serious threat for computer security, so automatic mal-ware classification techniques have received increasing attention. In recent years, deep learning (DL) techniques for computer vision have been successfully applied for malware classification by visualizing malware files and then using DL to classify visualized images. Although DL-based classification systems have been proven to be much more accurate than conventional ones, these systems have been shown to be vulnerable to adversarial attacks. However, there has been little research to consider the danger of adversarial attacks to visualized image-based malware classification systems. This paper proposes an adversarial attack method based on the gradient to attack image-based malware classification systems by introducing perturbations on resource section of PE files. The experimental results on the Malimg dataset show that by a small interference, the proposed method can achieve success attack rate when challenging convolutional neural network malware classifiers.
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