Mu Zhou, Yaoping Li, Xiaoge Huang, Q. Pu, Hui Yuan
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引用次数: 4
摘要
随着无线局域网(Wireless Local Area Network, WLAN)在室内环境中的广泛应用,室内无线局域网入侵检测以其无需特殊设备或目标协同即可完成入侵检测的优势,已成为各个领域的关键技术。然而,该技术存在一个严重的问题,即离线数据库建设通常会导致大量的人力和时间成本,特别是对于大规模的室内环境。针对这一问题,本文提出了一种新的低成本的室内无线局域网入侵检测方法。特别地,首先,通过类内迁移学习减少源域和目标域相同位置的接收信号强度(Received Signal Strength, RSS)数据之间的差异,将离线RSS数据及其标签之间的关系应用到在线RSS数据中。其次,利用RSS数据与源域相应标签之间的关系训练出的分类器对目标域RSS数据进行分类;第三,在源域和目标域之间进行迭代迁移学习,获得目标域RSS数据的标签。最后,实验结果表明,该方法具有较高的检测精度和较强的鲁棒性,对用于构建数据库的RSS数据数量具有较强的鲁棒性。
Indoor WLAN Intrusion Detection Using Intra-class Transfer Learning with Low Effort
With the widespread adoption of Wireless Local Area Network (WLAN) in indoor environment, indoor WLAN intrusion detection has become a key technique in various fields with the advantage of accomplishing intrusion detection without any requirement of special device or collaboration from the target. However, this technique is suffered by a serious problem that the offline database construction normally leads to high manpower and time cost especially for the large-scale indoor environment. To address this problem, a new indoor WLAN intrusion detection approach with low effort is proposed in this paper. Specially, first of all, the difference between the Received Signal Strength (RSS) data in source and target domains at the same locations is reduced by intra-class transfer learning with the purpose of applying the relations between the offline RSS data and their labels to the online RSS data. Second, the RSS data in target domain are classified by using the classifier trained from the relations of RSS data and the corresponding labels in source domain. Third, the iterative transfer learning between source and target domains is conducted to obtain the labels of RSS data in target domain. Finally, the experimental results demonstrate that the proposed approach is able to achieve high detection accuracy as well as the strong robustness to the number of RSS data used for database construction.