首页> 外文会议>European Signal Processing Conference(EUSIPCO 2005); 20050904-08; Antalya(TK) >ON THE USE OF PARTICLE FILTERING FOR MAXIMUM LIKELIHOOD PARAMETER ESTIMATION
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ON THE USE OF PARTICLE FILTERING FOR MAXIMUM LIKELIHOOD PARAMETER ESTIMATION

机译:粒子滤波在最大似然参数估计中的应用

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Particle filtering - perhaps more properly named Sequential Monte Carlo - approaches have a strong potential for signal and image processing applications. A problem of great practical significance in this field, which remains largely unsolved as of today, is the estimation of fixed model parameters based on the output of sequential simulations.In this contribution, we investigate maximum likelihood estimation approaches based either on gradient or EM (Expectation-Maximization) techniques and show that several recently proposed methods share the common feature of requiring the approximation of the expectation of a sum functional of the hidden states, conditionally on all the available observations. Considering this general task, we discuss empirical results concerning the influence of the number of particles and sample size. We also propose a robustifi-cation of the basic particle estimator which is based on forgetting ideas.
机译:粒子滤波(也许更恰当地命名为“顺序蒙特卡洛”)方法在信号和图像处理应用中具有强大的潜力。在该领域中具有重大实际意义的问题是,到目前为止,尚未解决的问题是基于顺序模拟的输出来估计固定模型参数。在此贡献中,我们研究了基于梯度或EM(期望最大化)技术,并表明最近提出的几种方法共有一个共同特征,即在所有可用观测条件上有条件地要求对隐藏状态的和函数进行期望的近似。考虑到这一一般任务,我们讨论了有关颗粒数量和样本大小影响的经验结果。我们还提出了基于遗忘思想的基本粒子估计器的鲁棒性。

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