基于空间金字塔池化和深度残差网络的恶意代码族分类方法

Jianyi Liu, Yansheng Qu, Jiaqi Li, Yunxiao Wang, Jing Zhang, H. Yin
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引用次数: 3

摘要

恶意代码及其衍生代码已成为网络安全的主要威胁。目前,一些方法将恶意代码转换为图像,并使用深度学习对家庭进行分类。然而,这些基于深度学习的族分类方法存在一个问题,即在模型训练之前需要对恶意代码图像进行统一缩放,这可能会导致潜在恶意代码图像特征的丢失。提出了一种基于空间金字塔池和深度残差网络的恶意代码分类网络。该网络可以接受任意大小的恶意代码图像作为输入,解决了神经网络输入对图像大小要求统一的问题。实验结果表明,本文的分类准确率为99.09%,召回率为96.69%,比相同数据集上的其他方法提高了2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malicious Code Family Classification Method Based on Spatial Pyramid Pooling and Deep Residual Network
Malicious code and its derivative code have become a major threat to network security. At present, some methods transform malicious code into images and use deep learning to classify families. However, these family classification methods based on deep learning has a problem that the malicious code images need to be uniformly scaled before model training, which may result in the loss of potential malicious code image features. This paper proposes a malicious code classification network based on spatial pyramid pooling and deep residual network. The network can accept malicious code images of any size as input, and solve the problem that neural network input requires uniform image size. The experimental results show that the classification accuracy of this paper is 99.09%, and the recall is 96.69%, which is 2% higher than other methods on the same dataset.
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