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Axis-Exchanged Compensation and Gait Parameters Analysis for High Accuracy Indoor Pedestrian Dead Reckoning

机译:高精度室内行人航道推算的轴交换补偿和步态参数分析

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Pedestrian dead reckoning (PDR) is an effective way for navigation coupled with GNSS (Global Navigation Satellite System) or weak GNSS signal environment like indoor scenario. However, indoor location with an accuracy of 1 to 2 meters determined by PDR based on MEMS-IMU is still very challenging. For one thing, heading estimation is an important problem in PDR because of the singularities. For another thing, walking distance estimation is also a critical problem for pedestrian walking with randomness. Based on the above two problems, this paper proposed axis-exchanged compensation and gait parameters analysis algorithm to improve the navigation accuracy. In detail, an axis-exchanged compensation factored quaternion algorithm is put forward first to overcome the singularities in heading estimation without increasing the amount of computation. Besides, real-time heading is updated by R-adaptive Kalman filter. Moreover, gait parameters analysis algorithm can be divided into two steps: cadence detection and step length estimation. Thus, a method of cadence classification and interval symmetry is proposed to detect the cadence accurately. Furthermore, a step length model adjusted by cadence is established for step length estimation. Compared to the traditional PDR navigation, experimental results showed that the error of navigation reduces 32.6%.
机译:行人航位推算(PDR)是结合GNSS(全球导航卫星系统)或弱GNSS信号环境(如室内场景)进行导航的有效方法。但是,由基于MEMS-IMU的PDR确定的精度为1至2米的室内位置仍然非常具有挑战性。一方面,由于奇异性,航向估计是PDR中的重要问题。另一方面,步行距离估计也是行人随机行走的关键问题。针对以上两个问题,提出了轴交换补偿和步态参数分析算法,以提高导航精度。详细地,提出了一种轴交换补偿因数四元数算法,以克服航向估计中的奇异性而不增加计算量。此外,实时航向通过R自适应卡尔曼滤波器进行更新。此外,步态参数分析算法可分为两步:节奏检测和步长估计。因此,提出了一种节奏分类和区间对称的方法来准确地检测节奏。此外,建立由步调调整的步长模型以进行步长估计。实验结果表明,与传统的PDR导航相比,导航误差降低了32.6%。

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