使用Efficientnet检测恶意软件

Sandip Shinde, Aditya Dhotarkar, Dhanshree Pajankar, Kshitij Dhone, Sejal Babar
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引用次数: 0

摘要

恶意软件的数量、复杂性和种类都在以惊人的速度增长。攻击者和黑客经常创建可以自动重新排序和加密代码的系统,以避免被发现。本文提出了一种改进的恶意软件检测方法,利用现代神经网络模型——高效神经网络(effentnet),以达到更高的准确性和效率。该项目使用了从Dike数据集导入的大约2000个分类为恶意和良性文件的样本来实施。然后将可移植可执行文件(PE)转换为灰度图像,使用基于卷积神经网络的图像分类算法Efficient进行恶意软件检测。具体而言,本研究实现了B0 ~ B3 4个模型。在整个过程中实现了敏捷软件开发技术和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malware Detection Using Efficientnet
The quantity, complexity, and variety of malware are all increasing at an alarming rate. Attackers and hackers frequently create systems that can automatically reorder and encrypt their code in order to avoid detection. This paper proposes an improvement in malware detection using a modern neural network model, EfficientNet, determined to achieve higher accuracy and efficiency. The project was implemented using around 2000 samples classified as malicious and benign files imported from the Dike dataset. The portable executable (PE) files were then converted into grayscale images to carry out malware detection using Efficient, an image classification algorithm based on convolutional neural networks. In particular, 4 models - B0 to B3 were implemented in this study. The Agile software development techniques and methodologies were implemented throughout the process.
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