DIDarknet: A Contemporary Approach to Detect and Characterize the Darknet Traffic using Deep Image Learning

Arash Habibi Lashkari, Gurdip Kaur, Abir Rahali
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引用次数: 49

Abstract

Darknet traffic classification is significantly important to categorize real-time applications. Although there are notable efforts to classify darknet traffic which rely heavily on existing datasets and machine learning classifiers, there are extremely few efforts to detect and characterize darknet traffic using deep learning. This work proposes a novel approach, named DeepImage, which uses feature selection to pick the most important features to create a gray image and feed it to a two-dimensional convolutional neural network to detect and characterize darknet traffic. Two encrypted traffic datasets are merged to create a darknet dataset to evaluate the proposed approach which successfully characterizes darknet traffic with 86% accuracy.
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DIDarknet:一种使用深度图像学习检测和表征暗网流量的当代方法
暗网流量分类对实时应用进行分类具有重要意义。尽管在对严重依赖于现有数据集和机器学习分类器的暗网流量进行分类方面有显著的努力,但使用深度学习检测和表征暗网流量的努力却很少。这项工作提出了一种名为DeepImage的新方法,该方法使用特征选择来选择最重要的特征来创建灰度图像,并将其馈送到二维卷积神经网络以检测和表征暗网流量。将两个加密流量数据集合并为暗网数据集,以评估所提出的方法,该方法成功地表征了暗网流量,准确率为86%。
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