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A Novel Kalman Filter with State Constraint Approach for the Integration of Multiple Pedestrian Navigation Systems

机译:一种新颖的状态约束卡尔曼滤波器用于多人行导航系统的集成

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Numerous solutions/methods to solve the existing problems of pedestrian navigation/localization have been proposed in the last decade by both industrial and academic researchers. However, to date there are still major challenges for a single pedestrian navigation system (PNS) to operate continuously, robustly, and seamlessly in all indoor and outdoor environments. In this paper, a novel method for pedestrian navigation approach to fuse the information from two separate PNSs is proposed. When both systems are used at the same time by a specific user, a nonlinear inequality constraint between the two systems’ navigation estimates always exists. Through exploring this constraint information, a novel filtering technique named Kalman filter with state constraint is used to diminish the positioning errors of both systems. The proposed method was tested by fusing the navigation information from two different PNSs, one is the foot-mounted inertial navigation system (INS) mechanization-based system, the other PNS is a navigation device that is mounted on the user’s upper body, and adopting the pedestrian dead reckoning (PDR) mechanization for navigation update. Monte Carlo simulations and real field experiments show that the proposed method for the integration of multiple PNSs could improve each PNS’ navigation performance.
机译:在过去的十年中,工业和学术研究人员都提出了许多解决行人导航/定位问题的解决方案/方法。但是,迄今为止,单个行人导航系统(PNS)在所有室内和室外环境中连续,稳定和无缝地运行仍然存在重大挑战。本文提出了一种行人导航方法,用于融合来自两个单独的PNS的信息的新方法。当特定用户同时使用两个系统时,两个系统的导航估计之间始终存在非线性不平等约束。通过探索该约束信息,使用一种具有状态约束的称为卡尔曼滤波器的新颖滤波技术来减小两个系统的定位误差。通过融合来自两个不同PNS的导航信息来测试所提出的方法,一个是基于脚踏惯性导航系统(INS)的机械化系统,另一个PNS是一个安装在用户上身的导航设备,并采用行人航位推算(PDR)机械化导航更新。蒙特卡洛仿真和现场实验表明,所提出的集成多个PNS的方法可以提高每个PNS的导航性能。

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