基于卷积神经网络的可视化检测技术改进的恶意软件检测结果

Putu Sukma Dharmalaksana, T. Mantoro, Lutfi G A Khakim, Muchlis Nurseno
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引用次数: 1

摘要

互联网技术的飞速发展给软件的使用带来了重大变化,使软件行业不断发展壮大,并相互竞争,推出创新产品,使生活更轻松。然而,在各种平台上传播的软件包含大量恶意软件,这些恶意软件会危及用户个人信息的安全。直到现在,研究人员仍在尝试各种恶意软件检测方法,以尽量减少动态和静态方法的弱点。本研究将比较基于可视化检测技术的恶意软件检测方法和一种深度学习,即卷积神经网络(CNN)。评价实验采用两种图像增强方法,分别是B2IMG和Gabor滤波方法。我们使用的CNN架构,如VGG3和其他架构结合了几个卷积层和池化层。评价运行结果表明,B2IMG可视化方法在使用彩色RGB图像格式时,准确率最高可达99.86%,f值最高可达97.00%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Malware Detection Results using Visualization-Based Detection Techniques ant Convolutional Neural Network
The rapid advancement of internet technology has carried major changes in the use of software, st the industry growing up and competing with each other to present innovations for making life easier. However, software spread on various platforms contains a lot of malware, which can compromise the security of users’ personal information. Until now, researchers continue to try various methods of malware detection to minimize the weaknesses of dynamic and static methods. This study will compare the malware detection method using Visualization-Based Detection Techniques and one type of deep learning, which is Convolutional Neural Network (CNN). The evaluation experiment used two methods of image augmentation, which are the B2IMG dan Gabor Filter methods. The CNN architectures that we used, such as VGG3 dan other architectures combined with several convolutional layers and pooling layers. The evaluation run result indicates that the B2IMG visualization method got a maximum accuracy value of 99,86% and an F-score of 97,00% when using colored RGB image format.
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