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Malware homology determination using visualized images and feature fusion

机译:使用可视图像和特征融合的恶意软件同源性确定

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The family homology determination of malware has become a research hotspot as the number of malware variants are on the rise. However, existing studies on malware visualization only determines homology based on the global structure features of executable, which leads creators of some malware variants with the same structure intentionally set to misclassify them as the same family. We sought to develop a homology determination method using the fusion of global structure features and local fine-grained features based on malware visualization. Specifically, the global structural information of the malware executable file was converted into a bytecode image, and the opcode semantic information of the code segment was extracted by the n-gram feature model to generate an opcode image. We also propose a dual-branch convolutional neural network, which features the opcode image and bytecode image as the final family classification basis. Our results demonstrate that the accuracy and F-measure of family homology classification based on the proposed scheme are 99.05% and 98.52% accurate, respectively, which is better than the results from a single image feature or other major schemes.
机译:随着恶意软件变体的数量正在上升,家庭同源性的恶意软件已经成为一个研究热点。然而,关于恶意软件可视化的现有研究仅基于可执行文件的全局结构特征来确定同源性,这导致某些恶意软件变体的创建者,其特点是将其分类为同一系列的相同结构。我们试图使用全局结构特征和基于恶意软件可视化的局部细粒度特征来开发同源性确定方法。具体地,将恶意软件可执行文件的全局结构信息转换为字节码图像,并且由n克特征模型提取代码段的操作码语义信息以生成操作码图像。我们还提出了一个双分支卷积神经网络,它具有操作码图像和字节码图像作为最终的家庭分类。我们的结果表明,基于所提出的方案的家庭同源性分类的准确性和F测量分别为99.05%和98.52%,精确,比单个图像特征或其他主要方案的结果更好。

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