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Pedestrian Navigation Method Based on Machine Learning and Gait Feature Assistance

机译:基于机器学习和步态特征辅助的行人导航方法

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摘要

In recent years, as the mechanical structure of humanoid robots increasingly resembles the human form, research on pedestrian navigation technology has become of great significance for the development of humanoid robot navigation systems. To solve the problem that the wearable inertial navigation system based on micro-inertial measurement units (MIMUs) installed on feet cannot effectively realize its positioning function when the body movement is too drastic to be measured correctly by commercial grade inertial sensors, a pedestrian navigation method based on construction of a virtual inertial measurement unit (VIMU) and gait feature assistance is proposed. The inertial data from different positions of pedestrians’ lower limbs are collected synchronously via actual IMUs as training samples. The nonlinear mapping relationship between inertial information from the human foot and leg is established by a visual geometry group-long short term memory (VGG-LSTM) neural network model, based on which the foot VIMU and virtual inertial navigation system (VINS) are constructed. The VINS experimental results show that, combined with zero-velocity update (ZUPT), the integrated method of error modification proposed in this paper can effectively reduce the accumulation of positioning errors in situations where the gait type exceeds the measurement range of the inertial sensors. The positioning performance of the proposed method is more accurate and stable in complex gait types than that merely using ZUPT.
机译:近年来,随着类人机器人的机械结构越来越类似于人的形式,行人导航技术的研究对于类人机器人导航系统的发展具有重要意义。为了解决基于脚上微惯性测量单元(MIMU)的可穿戴式惯性导航系统无法有效实现其定位功能的问题,这是一种行人导航方法,当人体运动太剧烈而无法通过商用级惯性传感器正确测量时基于虚拟惯性测量单元(VIMU)的构造和步态特征辅助,提出了一种新的方法。来自行人下肢不同位置的惯性数据通过实际的IMU作为训练样本同步收集。通过视觉几何组长短期记忆(VGG-LSTM)神经网络模型建立了人脚和腿的惯性信息之间的非线性映射关系,在此基础上构造了脚VIMU和虚拟惯性导航系统(VINS) 。 VINS实验结果表明,结合步态零速度更新(ZUPT),本文提出的误差修正的综合方法可以有效地减少步态类型超出惯性传感器测量范围的情况下的定位误差累积。与仅使用ZUPT相比,该方法在复杂步态类型中的定位性能更加准确和稳定。

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