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Crowd-Sourced Mobility Mapping for Location Tracking Using Unlabeled Wi-Fi Simultaneous Localization and Mapping

机译:使用无标签Wi-Fi同时定位和地图进行人群跟踪的移动性地图以进行位置跟踪

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摘要

Due to the increasing requirements of the seamless and round-the-clock Location-based services (LBSs), a growing interest in Wi-Fi network aided location tracking is witnessed in the past decade. One of the significant problems of the conventional Wi-Fi location tracking approaches based on received signal strength (RSS) fingerprinting is the time-consuming and labor intensive work involved in location fingerprint calibration. To solve this problem, a novel unlabeled Wi-Fi simultaneous localization and mapping (SLAM) approach is developed to avoid the location fingerprinting and additional inertial or vision sensors. In this approach, an unlabeled mobility map of the coverage area is first constructed by using the crowd-sourcing from a batch of sporadically recorded Wi-Fi RSS sequences based on the spectral cluster assembling. Then, the sequence alignment algorithm is applied to conduct location tracking and mobility map updating. Finally, the effectiveness of this approach is verified by the extensive experiments carried out in a campus-wide area.
机译:由于无缝和全天候的基于位置的服务(LBS)的需求不断增长,在过去的十年中,人们对Wi-Fi网络辅助的位置跟踪越来越感兴趣。基于接收信号强度(RSS)指纹识别的传统Wi-Fi位置跟踪方法的重要问题之一是位置指纹校准中涉及的耗时且劳动密集的工作。为了解决此问题,开发了一种新颖的未标记Wi-Fi同时定位和映射(SLAM)方法,以避免位置指纹和其他惯性或视觉传感器。在这种方法中,首先基于频谱簇组合,通过使用从一批零星记录的Wi-Fi RSS序列中进行众包来构建覆盖区域的未标记移动性地图。然后,将序列比对算法应用于位置跟踪和迁移图更新。最后,该方法的有效性通过在校园范围内进行的广泛实验得到了验证。

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