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Heterogeneous Cooperative Localization for Social Networks

机译:社交网络的异构合作本地化

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Location-aware techniques has become a hot research topic with great value in commercial and military applications. Cooperative localization, which utilizes multiple sensors in portable devices to estimate locations of the mobile users in the social networks, is one of the most promising solution for the indoor geo-location. Traditional cooperative localization methods are based on ranging techniques, they are highly dependent on the distance interpreted from the received signal strength (RSS) or time of arrival from anchors. However, a precise ranging procedure demands high performance hardware which would increase the cost to the current mobile platform. In this paper, we describes four ranging-free probabilistic cooperative localization algorithms: centroid scheme, nearest neighbor scheme, kernel scheme and AP density scheme to improve the accuracy for the indoor geo-location using current mobile devices. Since the GPS sensor embedded in the smart phone is able to provide accurate location information in the outdoor area, those mobile nodes can be used as calibrated anchors. The position of the indoor mobile node can be estimated by exchanging locations and RSSs from shared wireless access points information between the target node and anchor nodes. An empirical evaluation of the system is given to demonstrate the feasibility of these cooperative localization algorithms by reporting the results in a real-world environments, e.g. suburban area and city downtown. Moreover, we compared our results with the WiFi positioning system made by Skyhook Wireless to validate the accuracy of the proposed algorithms. Meanwhile, a Monte Carlo simulation is carried out to evaluate the performance of the cooperative algorithms under different scenarios. Results show that given the same scenario setting, the AP density scheme and kernel scheme outperform than other schemes.
机译:位置感知技术已成为热门研究课题,在商业和军事应用中具有重要价值。利用便携式设备中的多个传感器来估计社交网络中移动用户的位置的合作定位是室内地理位置最有希望的解决方案之一。传统的协作定位方法基于测距技术,它们高度依赖于根据接收信号强度(RSS)解释的距离或来自锚点的到达时间。但是,精确的测距程序需要高性能的硬件,这会增加当前移动平台的成本。在本文中,我们描述了四种无距离概率协同定位算法:质心方案,最近邻方案,核方案和AP密度方案,以提高使用当前移动设备进行室内地理位置的准确性。由于嵌入在智能手机中的GPS传感器能够在室外区域提供准确的位置信息,因此这些移动节点可以用作经过校准的锚点。室内移动节点的位置可以通过在目标节点和锚点节点之间交换共享无线接入点信息中的位置和RSS来估计。对系统进行了实证评估,以通过在真实环境(例如,实际环境)中报告结果来证明这些协作定位算法的可行性。郊区和市区。此外,我们将结果与Skyhook Wireless制造的WiFi定位系统进行了比较,以验证所提出算法的准确性。同时,进行了蒙特卡洛仿真,以评估不同场景下协同算法的性能。结果表明,在相同的场景设置下,AP密度方案和内核方案的性能优于其他方案。

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