SMC方法中有效重要函数的精确矩匹配

S. Saha, P. Mandal, Y. Boers, H. Driessen
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引用次数: 2

摘要

在本文中,我们介绍了一种新的建议分布,将其与顺序蒙特卡罗(SMC)方法结合使用来解决非线性滤波问题。建议分布包含了关于可用状态和观察过程中要估计的当前状态的所有信息。这使得它比更常用的状态转移密度更有效,但忽略了最近的观察。由于它的高斯性质,它也很容易实现。我们进一步表明,所引入的建议比其他同样包含状态和观测值的类似重要函数表现得更好。
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Exact Moment Matching for Efficient Importance Functions in SMC Methods
In this article we introduce a new proposal distribution to be used in conjunction with the sequential Monte Carlo (SMC) method of solving non-linear filtering problem. The proposal distribution incorporates all the information about the to be estimated current state form both the available state and observation processes. This makes it more effective than the state transition density which is more commonly used but ignores the recent observation. Because of its Gaussian nature it is also very easy to implement. We show further that the introduced proposal performs better than other similar importance functions which also incorporate both state and observations.
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