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Indoor Multi-Floor 3D Target Tracking Based on the Multi-Sensor Fusion

机译:基于多传感器融合的室内多层3D目标跟踪

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摘要

In recent years, indoor target tracking based on pedestrian dead reckoning (PDR) and the built-in inertial sensors of smartphone has become a research hotspot in location-based services (LBS). However, indoor 3D target tracking using smartphone inertial measurement unit (IMU) mainly face challenges of error accumulation caused by the heading drift of sensors and height fluctuation caused by the instability of barometer. This paper proposes a multi-floor 3D target tracking system based on the built-in inertial sensors of smartphone. We first establish a 2D PDR movement model by raw sensor data and then 2D PDR position is corrected in real time by rebuilding the particle filter model and refining the calculation method of particle weight to reduce the accumulated errors. A height displacement measurement method based on Kalman filter and floor change detection (FCD) algorithm is proposed to extend the 2D PDR tracking to 3D space. We first skillfully use Kalman filter to fuse the data of barometer and accelerometer, after that, the FCD algorithm is proposed to evaluate and modify the output height of the Kalman filter, evaluating the floor change state and maintaining steady height. The 3D target tracking, which consists of real-time 2D trajectory information and height information, is provided to the pedestrian. Experimental results demonstrate that the proposed method based on the fusion of various technologies can effectively maintain track stability and smoothness with low cost and high positioning accuracy. Moreover, additional peripheral devices need not be arranged in advance.
机译:近年来,基于行人死亡估算(PDR)的室内目标跟踪和智能手机的内置惯性传感器已成为基于位置的服务(LBS)的研究热点。然而,使用智能手机惯性测量单元(IMU)的室内3D目标跟踪主要面临误差累积的挑战,由气压计不稳定引起的传感器和高度波动引起的误差累积。本文提出了一种基于智能手机内置惯性传感器的多层3D目标跟踪系统。我们首先通过原始传感器数据建立2D PDR运动模型,然后通过重建粒子滤波器模型并精制粒子重量的计算方法来实时校正2D PDR位置,以减少累积误差。提出了一种基于卡尔曼滤波器和地板变化检测(FCD)算法的高度位移测量方法,以扩展2D PDR跟踪到3D空间。我们首先巧妙地使用卡尔曼滤波器熔断气压计和加速度计的数据,之后,提出了FCD算法来评估和修改卡尔曼滤波器的输出高度,评估楼层变化状态并保持稳定高度。 3D目标跟踪,由实时2D轨迹信息和高度信息组成,用于行人。实验结果表明,基于各种技术融合的提出方法可以有效地保持具有低成本和高定位精度的跟踪稳定性和平滑度。此外,不需要预先布置额外的外围设备。

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