Monte Carlo methods for signal processing: Recent advances

P. Djurić
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引用次数: 4

Abstract

In many areas of signal processing, the trend of addressing problems with increased complexity continues. This is best reflected by the forms of the models used for describing phenomena of interest. Typically, in these models the number of unknowns that have to be estimated is large and the assumptions about noise distributions are often non-tractable for analytical derivations. One major reason that allows researchers to resolve such difficult problems and delve into uncharted territories is the advancement of methods based on Monte Carlo simulations including Markov chain Monte Carlo sampling and particle filtering. In this paper, the objective is to provide a brief review of the basics of these methods and then elaborate on the most recent advances in the field.
蒙特卡罗信号处理方法:最新进展
在信号处理的许多领域,解决日益复杂的问题的趋势仍在继续。用于描述感兴趣的现象的模型的形式最好地反映了这一点。通常,在这些模型中,必须估计的未知数数量很大,并且关于噪声分布的假设通常无法用于分析推导。使研究人员能够解决这些难题并深入未知领域的一个主要原因是基于蒙特卡罗模拟的方法的进步,包括马尔可夫链蒙特卡罗采样和粒子滤波。在本文中,目的是提供这些方法的基础的简要回顾,然后详细说明在该领域的最新进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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