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首页> 外文期刊>Network Science and Engineering, IEEE Transactions on >Abnormal Crowd Traffic Detection for Crowdsourced Indoor Positioning in Heterogeneous Communications Networks
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Abnormal Crowd Traffic Detection for Crowdsourced Indoor Positioning in Heterogeneous Communications Networks

机译:异常通信网络中众包室内定位的异常人群流量检测

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WiFi fingerprint-based indoor positioning system emerges to provide fundamental location-related service in heterogeneous communications networks. It relies on crowdsourcing technology in the collection of received signal strength (RSS) to dynamically update fingerprint database. However, this crowdsourced indoor positioning system is vulnerable to the intrusion of dishonest users (i.e., attackers). Attackers may manipulate the number of users who submit RSS fingerprints, and finally mislead the evaluation of crowd traffic evaluation. In this paper, we propose an abnormal crowd traffic detection (ACTD) scheme to identify attackers according to their abnormal RSS sensing behaviors. Specifically, a fog server is explored to serve as the crowdsourcing platform to perform data storage and detection. We first categorize attackers into three different levels according to their real geographical locations and collusion. Then, through the analysis of pseudonym changing behavior in RSS submission, we propose a rarity-based outlier detection to classify attackers of level-1. Furthermore, we propose a variable-length Markov model, i.e., probabilistic suffix tree (PST), to detect the colluded users who are not at the target point of interest (POI). In addition, a metric learning algorithm is developed to detect the collusion of AP organizer based on RSS fingerprint distance difference. The extensive simulation results show that the ACTD scheme can effectively resist attackers with high accuracy and appropriately deal with traffic evaluation from RSS fingerprint information.
机译:基于WiFi指纹的室内定位系统出现在异构通信网络中提供基本的位置相关服务。它依赖于众包技术在收集的信号强度(RSS)集中动态更新指纹数据库。然而,这种众群室内定位系统容易受到不诚实用户的侵入(即,攻击者)。攻击者可能会操纵提交RSS指纹的用户数量,最后误导人群交通评估的评估。在本文中,我们提出了一种异常的人群交通检测(ACTD)方案,以根据其异常的RSS传感行为来识别攻击者。具体而言,探索雾服务器用作众群平台以执行数据存储和检测。我们首先根据其真实地理位置和勾结将攻击者分为三个不同的水平。然后,通过分析RSS提交中的假名变化行为,我们提出了基于稀有的异常检测来对级别-1的攻击者进行分类。此外,我们提出了一种可变长度的Markov模型,即概率后缀树(PST),以检测不在目标兴趣点(POI)的勾结用户。另外,开发了公制学习算法以基于RSS指纹距离差异来检测AP组织者的勾结。广泛的仿真结果表明,探测器方案可以有效地抵抗高精度的攻击仪,并适当地处理来自RSS指纹信息的交通评估。

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