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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Multiplicative Gaussian Particle Filter
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Multiplicative Gaussian Particle Filter

机译:乘法高斯粒子滤波器

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We propose a new sampling-based approach for approximate inference in filtering problems. Instead of approximating conditional distributions with a finite set of states, as done in particle filters, our approach approximates the distribution with a weighted sum of functions from a set of continuous functions. Central to the approach is the use of sampling to approximate multiplications in the Bayes filter. We provide theoretical analysis, giving conditions for sampling to give good approximation. We next specialize to the case of weighted sums of Gaussians, and show how properties of Gaussians enable closed-form transition and efficient multiplication. Lastly, we conduct preliminary experiments on a robot localization problem and compare performance with the particle filter, to demonstrate the potential of the proposed method.
机译:我们提出了一种基于新的采样方法,用于过滤问题的近似推断。除了在粒子滤波器中完成的,而不是用有限的状态近似条件分布,而不是在粒子过滤器中完成的,而是通过来自一组连续功能的加权函数的分布近似于分布。该方法的核心是使用采样在贝叶斯滤波器中近似乘法。我们提供理论分析,给出采样条件以提供良好的近似。我们接下来专注于高斯的加权和加权的情况,并展示高斯的特性能够实现闭合形式的转换和有效乘法。最后,我们对机器人定位问题进行初步实验,并将性能与粒子过滤器进行比较,以证明所提出的方法的潜力。

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