首页> 外文会议>Pacific Rim International Conference on Artificial Intelligence >A Client-Assisted Approach Based on User Collaboration for Indoor Positioning
【24h】

A Client-Assisted Approach Based on User Collaboration for Indoor Positioning

机译:基于用户合作的客户辅助方法进行室内定位

获取原文

摘要

Fingerprint indoor positioning technology is one of the most attractive and promising techniques for mobile devices positioning. However, it is also time consuming for building the radio map offline and cannot provide reliable accuracy due to the changing environment. In response to this compelling problem, a client-assisted (CA) approach is proposed for radio map construction based on multi-user collaboration. In this method, multidimensional scaling (MDS) approach is used to transform the distance to two dimensional data. MDS as an set of analytical technique has been used for many years in fields like economics and marketing research. It is a suitable for reducing the data dimensionality to points in two or three dimensional space. In CA, this can be used where only distances between users are known which are used as an input data. All the client data is collected at one point because of the centralized nature of the MDS. It is advantageous in that, MDS can reconstruct the relative map of the network even when there are no anchor clients (clients with a priori known location). Given a sufficient number of known client locations, MDS generates accurate position estimation enabling local map to be transformed into an absolute map. Based on gradient features of users' walking speed, solve-stuck (SS) method is adopted to improve the efficiency by reducing calculation complexity and solving "data drift" problem. Radio map with a small number of labeled fingerprints can be self-updated by iterating the distance between users. Kalman filter (KF) method is used to remove the noise to make the trajectory closer to the ideal trajectory. We further demonstrate the influence of density distribution and time-cost of different number of clients. The experimental results show that CA approach can improve positioning accuracy with acceptable time-cost.
机译:指纹室内定位技术是移动设备定位最具吸引力和最有前途的技术之一。但是,对于离线构建无线电映射也是耗时的,并且由于变化的环境而无法提供可靠的精度。为了响应这种引人注目的问题,提出了一种基于多用户协作的无线电映射结构的客户辅助(CA)方法。在该方法中,多维缩放(MDS)方法用于将距离转换为二维数据。 MDS作为一组分析技术已在经济学和营销研究等领域使用多年。它是一种适合将数据维度降低到两个或三维空间中的点。在CA中,可以使用它在已知用户之间仅距离用作输入数据的情况下使用。由于MD的集中性,因此在一点收集所有客户端数据。有利的是,即使没有锚点客户端(具有先验已知位置的客户端),MDS也可以重建网络的相对映射。给定足够数量的已知客户端位置,MDS产生精确的位置估计,使得能够将本地映射变换为绝对地图。基于用户步行速度的梯度特征,采用求解(SS)方法来通过降低计算复杂性和求解“数据漂移”问题来提高效率。通过迭代用户之间的距离,可以通过迭代少量标记指纹的无线电映射。卡尔曼滤波器(KF)方法用于去除噪声以使轨迹更接近理想的轨迹。我们进一步展示了密度分布和不同数量客户的时间成本的影响。实验结果表明,CA方法可以通过可接受的时间成本提高定位精度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号