Bootstrapping Particle Filters using Kernel Recursive Least Squares

Boris N. Oreshkin, M. Coates
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引用次数: 2

Abstract

Although particle filters are extremely effective algorithms for object tracking, one of their limitations is a reliance on an accurate model for the object dynamics and observation mechanism. The limitation is circumvented to some extent by the incorporation of parameterized models in the filter, with simultaneous on-line learning of model parameters, but frequently, identification of an appropriate parametric model is extremely difficult. This paper addresses this problem, describing an algorithm that combines kernel recursive least squares and particle filtering to learn a functional approximation for the measurement mechanism whilst generating state estimates. The paper focuses on the specific scenario when a training period exists during which supplementary measurements are available from a source that can be accurately modelled. Simulation results indicate that the proposed algorithm, which requires very little information about the true measurement mechanism, can approach the performance of a particle filter equipped with the correct observation model.
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使用核递归最小二乘的自举粒子滤波器
虽然粒子滤波是非常有效的目标跟踪算法,但其局限性之一是依赖于精确的目标动力学和观察机制模型。通过在滤波器中加入参数化模型,同时在线学习模型参数,在一定程度上规避了这一限制,但通常情况下,识别合适的参数化模型是非常困难的。本文解决了这个问题,描述了一种结合核递归最小二乘和粒子滤波的算法,在生成状态估计的同时学习测量机制的函数逼近。本文关注的是一个特定的场景,即存在一个训练期间,在此期间可以从一个可以精确建模的来源获得补充测量。仿真结果表明,该算法在对真实测量机制的信息要求很少的情况下,可以近似于配备正确观测模型的粒子滤波器的性能。
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