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Indoor positioning using particle filters with optimal importance function

机译:使用具有最佳重要性功能的颗粒过滤器进行室内定位

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Particle filters have been widely used in positioning problems, to post-process the noisy location sensor measurements. In this paper, instead of the commonly used Prior Importance Function for particle filtering, we have formulated and applied the Optimal Importance Function. Unlike other importance functions, the Optimal Importance Function minimizes the variance of particle weights and thus resolves the degeneracy problem of particle filters. In this work, we have derived a closed form formula for the Optimal Importance Function using map-independent random walk velocity motion model and a GMM sensor error. Due to the generality of the proposed method, it can be used for a wide range of moving objects in different environments. Simulation results support the validity of modeling assumptions and the advantage of applying an Optimal Importance Function in indoor localization and positioning.
机译:粒子过滤器已广泛用于定位问题,以对嘈杂的位置传感器测量结果进行后处理。在本文中,我们代替了常用的先验重要性函数进行粒子滤波,而是制定并应用了最佳重要性函数。与其他重要性函数不同,最佳重要性函数可最大程度地减小粒子权重的方差,从而解决粒子过滤器的退化问题。在这项工作中,我们使用与地图无关的随机行走速度运动模型和GMM传感器误差推导了最佳重要性函数的封闭形式公式。由于所提出方法的一般性,它可以用于不同环境中的各种移动物体。仿真结果支持建模假设的有效性以及在室内定位和定位中应用最佳重要性函数的优势。

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