饱和室内环境下倾斜冗余磁惯性传感器深度融合的航向状态估计

M. Karimi, Edwin Babaians, Martin Oelsch, E. Steinbach
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引用次数: 4

摘要

在室内环境中基于已知参考的鲁棒姿态和航向估计是各种机器人应用的基本组成部分。经济实惠的姿态和航向参考系统(AHRS)通常使用低成本的固态mems传感器。由于陀螺测量的漂移和地球磁场感知的畸变,这种系统的航向估计精度通常会降低。提出了一种基于倾斜冗余惯性和磁传感器的室内航向鲁棒估计方法。采用基于递归神经网络(RNN)的融合进行鲁棒航向估计,并具有对外部磁场异常的补偿能力。我们使用之前描述的基于相关性的过滤器模型来预处理数据并增强扰动缓解能力。实验结果表明,所提出的方案能够成功地缓解饱和室内环境下的异常,长期使用的均方根误差小于[公式:见文]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Fusion of a Skewed Redundant Magnetic and Inertial Sensor for Heading State Estimation in a Saturated Indoor Environment
Robust attitude and heading estimation in an indoor environment with respect to a known reference are essential components for various robotic applications. Affordable Attitude and Heading Reference Systems (AHRS) are typically using low-cost solid-state MEMS-based sensors. The precision of heading estimation on such a system is typically degraded due to the encountered drift from the gyro measurements and distortions of the Earth’s magnetic field sensing. This paper presents a novel approach for robust indoor heading estimation based on skewed redundant inertial and magnetic sensors. Recurrent Neural Network-based (RNN) fusion is used to perform robust heading estimation with the ability to compensate for the external magnetic field anomalies. We use our previously described correlation-based filter model for preprocessing the data and for empowering perturbation mitigation. Our experimental results show that the proposed scheme is able to successfully mitigate the anomalies in the saturated indoor environment and achieve a Root-Mean-Square Error of less than [Formula: see text] for long-term use.
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