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WTrack: HMM-based walk pattern recognition and indoor pedestrian tracking using phone inertial sensors

机译:WTrack:基于HMM的步行模式识别和使用电话惯性传感器的室内行人跟踪

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摘要

Indoor tracking systems have become very popular, wherein pedestrian movement is analyzed in a variety of commercial and secure spaces. The inertial sensor-based method makes great contributions to continuous and seamless indoor pedestrian tracking. However, such a system is vulnerable to the cumulative locating errors when moving distance increases. Inaccurate heading values caused by the interference of body swing of natural walking and the geomagnetic disturbances are the main sources of the accumulative errors. To reduce such errors, additional infrastructure or highly accurate sensors have been used by previous works that considerably raise the complexity of the architecture. This paper presents an indoor pedestrian tracking system called WTrack, using only geomagnetic sensors and acceleration sensors that are commonly carried by smartphones. A fine-grained walk pattern of indoor pedestrians is modeled through Hidden Markov Model. With this model, WTrack can track indoor pedestrians by continuously recognizing the pre-defined pedestrians' walk pattern. More importantly, WTrack is able to resist both the interference of body swing of natural walking and the geomagnetic disturbances of nearby objects. Our experimental results reveal that the location error is <2 m, which is considered adequate for indoor location-based-service applications. The adaptive sample rate adjustment mode further reduces the energy consumption by 52 % in comparison, as opposed to the constant sampling mode.
机译:室内跟踪系统已变得非常流行,其中在各种商业和安全空间中分析行人运动。基于惯性传感器的方法为连续和无缝的室内行人跟踪做出了巨大贡献。然而,当移动距离增加时,这样的系统容易受到累积定位误差的影响。自然步行的身体摆动和地磁干扰的干扰所导致的航向值不正确是累积误差的主要来源。为了减少此类错误,以前的工作已使用其他基础结构或高精度传感器,从而大大提高了体系结构的复杂性。本文介绍了一种称为WTrack的室内行人跟踪系统,该系统仅使用智能手机通常配备的地磁传感器和加速度传感器。通过隐马尔可夫模型对室内行人的细粒度步行模式进行了建模。使用此模型,WTrack可以通过连续识别预定义的行人的行走方式来跟踪室内行人。更重要的是,WTrack能够抵抗自然行走的身体摆动的干扰和附近物体的地磁干扰。我们的实验结果表明,位置误差小于2 m,这对于室内基于位置的服务应用已足够。与恒定采样模式相比,自适应采样率调整模式与之相比进一步降低了52%的能耗。

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