检测与激励:一种边缘计算中目标检测的篡改检测机制

Zhihui Zhao, Yicheng Zeng, Jinfang Wang, Hong Li, Hongsong Zhu, Limin Sun
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引用次数: 1

摘要

基于边缘计算的目标检测任务受到了广泛的关注。一个普遍的担忧尚未得到解决,即边缘可能不可靠,并将不正确的数据上传到云。现有的工作主要集中在边缘传输数据的一致性上。然而,在输入和输出本质上不同的情况下,数据处理的真实性没有得到解决。本文首先对篡改检测进行了简单的建模。然后,基于特征插入和博弈论,提出了篡改检测和经济激励机制(TDEI)。在篡改检测中,终端与云协商一组特征,并将其插入到原始数据中,云判断来自边缘的结果是否包含相关信息。诚信激励利用博弈论在不同边缘之间灌输不信任,防止它们相互勾结,挫败篡改检测。同时,还考虑了节点的主观性。TDEI将篡改检测分布到所有边缘,实现了边缘结果的自检测。基于KITTI数据集的实验结果表明,当终端的附加开销对图像和视频分别小于30%和20%时,检测准确率分别为95%和80%。TDEI对原始数据的干扰率,视频约为16%,图像约为0%。最后,讨论了TDEI的优势和可扩展性。
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Detection and Incentive: A Tampering Detection Mechanism for Object Detection in Edge Computing
The object detection tasks based on edge computing have received great attention. A common concern hasn't been addressed is that edge may be unreliable and uploads the incorrect data to cloud. Existing works focus on the consistency of the transmitted data by edge. However, in cases when the inputs and the outputs are inherently different, the authenticity of data processing has not been addressed. In this paper, we first simply model the tampering detection. Then, bases on the feature insertion and game theory, the tampering detection and economic incentives mechanism (TDEI) is proposed. In tampering detection, terminal negotiates a set of features with cloud and inserts them into the raw data, after the cloud determines whether the results from edge contain the relevant information. The honesty incentives employs game theory to instill the distrust among different edges, preventing them from colluding and thwarting the tampering detection. Meanwhile, the subjectivity of nodes is also considered. TDEI distributes the tampering detection to all edges and realizes the self-detection of edge results. Experimental results based on the KITTI dataset, show that the accuracy of detection is 95% and 80%, when terminal's additional overhead is smaller than 30% for image and 20% for video, respectively. The interference ratios of TDEI to raw data are about 16% for video and 0% for image, respectively. Finally, we discuss the advantage and scalability of TDEI.
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