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HPIPS: A High-Precision Indoor Pedestrian Positioning System Fusing WiFi-RTT MEMS and Map Information

机译:HPIP:高精度室内行人定位系统融合WiFi-RTTMEMS和地图信息

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摘要

In order to solve the problem of pedestrian positioning in the indoor environment, this paper proposes a high-precision indoor pedestrian positioning system (HPIPS) based on smart phones. First of all, in view of the non-line-of-sight and multipath problems faced by the radio-signal-based indoor positioning technology, a method of using deep convolutional neural networks to learn the nonlinear mapping relationship between indoor spatial position and Wi-Fi RTT (round-trip time) ranging information is proposed. When constructing the training dataset, a fingerprint grayscale image construction method combined with specific AP (Access Point) positions was designed, and the representative physical space features were extracted by multi-layer convolution for pedestrian position prediction. The proposed positioning model has higher positioning accuracy than traditional fingerprint-matching positioning algorithms. Then, aiming at the problem of large fluctuations and poor continuity of fingerprint positioning results, a particle filter algorithm with an adaptive update of state parameters is proposed. The algorithm effectively integrates microelectromechanical systems (MEMS) sensor information in the smart phone and the structured spatial environment information, improves the freedom and positioning accuracy of pedestrian positioning, and achieves sub-meter-level stable absolute pedestrian positioning. Finally, in a test environment of about 800 m2, through a large number of experiments, compared with the millimeter-level precision optical dynamic calibration system, 94.2% of the positioning error is better than 1 m, and the average positioning error is 0.41 m. The results show that the system can provide high-precision and high-reliability location services and has great application and promotion value.
机译:为了解决室内环境中行人定位问题,本文提出了一种基于智能手机的高精度室内行人定位系统(HPIPS)。首先,鉴于基于无线电信号的室内定位技术面临的非视线和多径问题,一种使用深卷积神经网络的方法来学习室内空间位置与Wi之间的非线性映射关系 - 提出了-fi RTT(往返时间)测距信息。当构建训练数据集时,设计了一种与特定AP(接入点)位置结合的指纹灰度图像构造方法,并且通过用于行人位置预测的多层卷积提取代表性物理空间特征。所提出的定位模型具有比传统指纹匹配定位算法更高的定位精度。然后,针对强烈波动的问题和指纹定位结果的不良连续性,提出了具有状态参数自适应更新的粒子滤波器算法。该算法在智能手机和结构空间环境信息中有效地集成了微机电系统(MEMS)传感器信息,提高了行人定位的自由度和定位精度,并实现了亚米级稳定的绝对行人定位。最后,在约800平方米的测试环境中,通过大量实验,与毫米级精密光学动态校准系统相比,定位误差的94.2%优于1米,平均定位误差为0.41米。结果表明,该系统可以提供高精度和高可靠性的位置服务,具有很大的应用和促销价值。

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