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ActiveTracker: Uncovering the Trajectory of App Activities over Encrypted Internet Traffic Streams

机译:ActiveTracker:将应用程序活动的轨迹揭示在加密的Internet流量流中的应用程序活动

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Despite the increasing popularity of mobile applications and the widespread adoption of encryption techniques, mobile devices are still susceptible to security and privacy risks. In this paper, we propose ActiveTracker, a new type of sniffing attack that can reveal the fine-grained trajectory of user's mobile app usage from a sniffed encrypted Internet traffic stream. It firstly adopts a sliding window based approach to divide the encrypted traffic stream into a sequence of segments corresponding to different app activities. Then each traffic segment is represented by a normalized temporal-spacial traffic matrix and a traffic spectrum vector. Based on the normalized representation, a deep neural network (DNN) classification algorithm is developed to recognize the crucial activities conducted with different apps by the user. We show by extensive experiments on real-world app usage traffic collected from volunteers that the proposed approach achieves up to 78.5% accuracy in recognizing app trajectory over encrypted traffic streams.
机译:尽管移动应用的日益普及和广泛采用的加密技术,移动设备仍然容易受到安全和隐私风险。在本文中,我们提出ActiveTracker,一种新型的嗅探攻击,可以从嗅探加密的网络流量流显示用户的移动应用使用的细粒度的轨迹。它首次采用滑动窗口为基础的方法对加密的业务流划分为对应于不同的应用活动段的序列。然后,每个业务段是通过归一化的时间 - 空间流量矩阵和业务频谱向量来表示。基于标准化表示,深神经网络(DNN)分类算法开发识别与用户不同的应用程序进行的重要活动。我们发现由志愿者收集了现实世界的应用程序使用的流了广泛的实验,该方法在通过加密的信息流,识别应用轨迹实现了高达78.5%的准确率。

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