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Invariant particle filtering with application to localization

机译:不变粒子滤波及其在定位中的应用

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The recently introduced Invariant Extended Kalman Filter (IEKF) is an extended Kalman filter designed for systems admitting symmetries, that possesses interesting convergence properties, and a relative independence of the filter behavior with respect to the system's trajectory. In the present paper, the ideas are extended to a broad class of systems introducing the notion of “conditional invariance”, that is, invariance properties of the system once some of the state variables are known. We exploit this structure by devising an Invariant Rao-Blackwellized Particle Filter: those state variables are sampled, and the rest are marginalized out using IEKFs. The striking property of the obtained particle filter is that the Kalman gains are identical for all particles, leading to a drastic reduction of the computational burden. The strong potential of the method is illustrated by the challenging and realistic problem of localization from noisy inertial sensors and a noisy GPS having a randomly jumping bias.
机译:最近推出的不变扩展卡尔曼滤波器(IEKF)是为具有对称性的系统而设计的扩展卡尔曼滤波器,它具有有趣的收敛特性,并且滤波器行为相对于系统轨迹具有相对独立性。在本文中,这些思想被扩展到引入“条件不变性”概念的一类系统,即一旦知道了一些状态变量,系统的不变性属性。我们通过设计不变Rao-Blackwellized粒子过滤器来利用这种结构:对那些状态变量进行采样,然后使用IEKF将其余的状态变量边缘化。所获得的粒子滤波器的惊人特性是,对于所有粒子,卡尔曼增益均相同,从而大大减少了计算负担。噪声惯性传感器和具有随机跳跃偏差的噪声GPS定位带来的挑战性和现实性问题说明了该方法的强大潜力。

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