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MoLoc: On Distinguishing Fingerprint Twins

机译:MoLoc:区分指纹双胞胎

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摘要

Indoor localization has enabled a great number of mobile and pervasive applications, attracting attentions from researchers worldwide. Most of current solutions rely on Received Signal Strength (RSS) of wireless signals as location fingerprint, to discriminate locations of interest. Fingerprint uniqueness with respect to locations is a basic requirement in these fingerprinting-based solutions. However, due to insufficient number of signal sources, temporal variations of wireless signals, and rich multipath effects, such requirement is not always met in complex indoor environments, which we refer to as fingerprint ambiguity. In this work, we explore the potential of leveraging user motion against fingerprint ambiguity. Our basic idea is that user motion patterns collected by built-in sensors of mobile phones add to the diversity built by RSS fingerprints. On this basis, we propose MoLoc, a motion-assisted localization scheme implemented on mobile phones. MoLoc can easily be integrated in existing localization systems by simply adding a motion database that is constructed automatically by crowdsourcing. We conducted experiments in a large office hall. The experiment results show that MoLoc doubles the localization accuracy achieved by the fingerprinting method, and limits the mean localization error to less than 1m.
机译:室内本地化已启用了许多移动和普及的应用程序,引起了全球研究人员的关注。当前大多数解决方案都依赖无线信号的接收信号强度(RSS)作为位置指纹,以区分感兴趣的位置。在这些基于指纹的解决方案中,相对于位置的指纹唯一性是基本要求。然而,由于信号源数量不足,无线信号的时间变化以及丰富的多径效应,在复杂的室内环境(我们称之为指纹模糊度)中并不总是能够满足这种要求。在这项工作中,我们探索了利用用户动作防止指纹模糊的潜力。我们的基本思想是,手机内置传感器收集的用户运动模式会增加RSS指纹建立的多样​​性。在此基础上,我们提出了MoLoc,这是一种在手机上实现的运动辅助定位方案。通过简单地添加由众包自动构建的运动数据库,可以轻松地将MoLoc集成到现有的本地化系统中。我们在一个大型办公室里进行了实验。实验结果表明,MoLoc使指纹方法的定位精度提高了一倍,并将平均定位误差限制在1m以内。

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