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A Hybrid Framework for Mitigating Heading Drift for a Wearable Pedestrian Navigation System through Adaptive Fusion of Inertial and Magnetic Measurements

机译:一种混合框架,用于通过自适应融合的惯性和磁测量来缓解可穿戴行人导航系统的标题漂移

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摘要

Pedestrian navigation systems could serve as a good supplement for other navigation methods or for extending navigation into areas where other navigation systems are invalid. Due to the accumulation of inertial sensing errors, foot-mounted inertial-sensor-based pedestrian navigation systems (PNSs) suffer from drift, especially heading drift. To mitigate heading drift, considering the complexity of human motion and the environment, we introduce a novel hybrid framework that integrates a foot-state classifier that triggers the zero-velocity update (ZUPT) algorithm, zero-angular-rate update (ZARU) algorithm, and a state lock, a magnetic disturbance detector, a human-motion-classifier-aided adaptive fusion module (AFM) that outputs an adaptive heading error measurement by fusing heuristic and magnetic algorithms rather than simply switching them, and an error-state Kalman filter (ESKF) that estimates the optimal systematic error. The validation datasets include a Vicon loop dataset that spans 324.3 m in a single room for approximately 300 s and challenging walking datasets that cover large indoor and outdoor environments with a total distance of 12.98 km. A total of five different frameworks with different heading drift correction methods, including the proposed framework, were validated on these datasets, which demonstrated that our proposed ZUPT–ZARU–AFM–ESKF-aided PNS outperforms other frameworks and clearly mitigates heading drift.
机译:行人导航系统可以作为其他导航方法的良好补充或将导航扩展到其他导航系统无效的区域。由于惯性传感误差的累积,基于脚踏的惯性传感器的行人导航系统(PNSS)遭受漂移,尤其是出头漂移。为了缓解前置漂移,考虑到人为运动和环境的复杂性,我们介绍了一种新的混合框架,它集成了脚踏状态分类器,触发零速更新(Zupt)算法,零角速率更新(Zaru)算法,以及状态锁,磁干扰检测器,人动运动​​分类器辅助自适应融合模块(AFM),其通过融合启发式和磁算法而不是简单地切换它们,以及错误状态卡尔曼输出自适应标题误差测量筛选(ESKF),估计最佳系统误差。验证数据集包括VICON环路数据集,其在一个房间内跨越324.3米,其覆盖大型室内和室外环境的具有挑战性的行走数据集,总距离为12.98公里。在这些数据集中验证了具有不同标题漂移校正方法的五种不同框架,包括所提出的框架,这证明了我们所提出的Zupt-Zaru-AFM-ESKF辅助PNS优于其他框架,并清楚地减轻了标题漂移。

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