基于人工神经网络的恶意软件分析与分类

A. Makandar, A. Patrot
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引用次数: 67

摘要

今天,互联网上主要和严重的威胁是破坏系统的恶意软件或数据。恶意软件变体识别与分类是数字取证领域的重要研究课题之一。恶意软件二进制文件是一组指令,可能会在未经您授权的情况下影响您的系统。在这一领域的许多研究人员主要依靠特定的API调用、字节序列、统计和动态分析来检测和分类恶意软件。该方法将恶意软件表示为二维灰度图像,观察恶意软件图像的所有可用变体及其纹理相似性,从而激发基于纹理特征的恶意软件分类。纹理在恶意软件的识别和分类中起着非常重要的作用。本文的目的是利用Gabor小波变换和GIST对恶意数据进行基于全局特征的行为识别。实验在Mahenhur数据集上完成,该数据集包括3131个二进制样本,包括24个独特的恶意软件家族。该算法采用前馈人工神经网络(ANN)实现,使其具有总体唯一性。实验结果表明,该方法能够有效地检测和分类恶意软件,准确率达到96.35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malware analysis and classification using Artificial Neural Network
Today major and serious threat on internet is malicious software or data which damage the system. Malware variants identification and classification is the one of the most important research problem in digital forensics. Malware binaries are set of instructions which may affect your system without your authority. Many researchers worked in this area mainly relied on specific API calls, sequences of bytes, statistic and dynamic analysis is used for detection and classification of malware. The proposed method malware is represented as 2Dimensional gray scale image is observed malware images of all the available variants and their texture similarity, which motivate to classify malware based on texture features. The texture plays a very significant role in identify and classify malware. The objective of this paper is to identify a behavior of malicious data based on global features using Gabor wavelet transform and GIST. The experiment done on Mahenhur dataset which includes 3131 binaries samples comprising 24 unique malware families. The algorithm has been implemented using feed forward Artificial Neural Networks (ANN) it gives their overview uniqueness. The experimental results are promising to effectively detecting and classifying malware with good accuracy 96.35 %.
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