Malicious code detection method based on image segmentation and deep residual network RESNET

Lidong Xin, L. Chao, Liang He
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引用次数: 4

Abstract

Many existing malicious code detection methods based on deep learning basically have high accuracy, but when detecting malicious code families with high similarity, due to the lack of obvious training features, the detection accuracy is seriously reduced. To solve this problem, this paper proposes a malicious code detection method based on image segmentation and deep residual network. Firstly, the original gray image is transformed into more distinctive sample data by image segmentation technology, which makes the data set increase the distance between classes and reduce the distance within classes, and then the feature extraction and training are carried out through the deep residual network. In the paper, Malimg data set is used to test. Compared with the sample data set without image segmentation technology, the detection accuracy is improved from 95.86% to 98.94%, and the detection accuracy of similar malicious code family is increased from 51.85% to 81.48%
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基于图像分割和深度残差网络RESNET的恶意代码检测方法
现有的许多基于深度学习的恶意代码检测方法基本都具有较高的准确率,但在检测相似度较高的恶意代码族时,由于缺乏明显的训练特征,导致检测准确率严重降低。为了解决这一问题,本文提出了一种基于图像分割和深度残差网络的恶意代码检测方法。首先,通过图像分割技术将原始灰度图像转化为更有特色的样本数据,使数据集的类间距离增大,类内距离减小,然后通过深度残差网络进行特征提取和训练。本文采用maliming数据集进行测试。与未使用图像分割技术的样本数据集相比,检测准确率从95.86%提高到98.94%,相似恶意代码族的检测准确率从51.85%提高到81.48%
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