隐半马尔可夫模型的在线辨识

M. Azimi, P. Nasiopoulos, R. Ward
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引用次数: 6

摘要

隐马尔可夫模型(HMM)是信号建模中一种强大的工具。在HMM中,信号离开某一状态的概率是恒定的,因此信号停留在每一状态的持续时间呈指数分布。然而,这种指数密度并不适合于大量的物理信号。因此,使用一种更复杂的模型,称为隐藏半马尔科夫模型(HSMM),其中以某种形式对状态持续时间进行建模。本文针对隐半马尔可夫模型提出了一种新的信号模型。该模型基于状态持续时间相关的转移概率,其中状态持续时间密度用参数分布函数建模。提出了一种基于信号模型的自适应hsmm在线识别算法。该算法基于“递归预测误差”技术,其中参数估计在参数估计的可能性最大化的方向上自适应更新。数值结果表明,所提出的算法能够成功地估计出参数的真值。实验结果表明,该算法能够自适应跟踪参数的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online identification of hidden semiMarkov models
Hidden Markov models (HMM) are a powerful tool in signal modelling. In an HMM, the probability that signal leaves a state is constant, and hence the duration that signal stays in each state has an exponential distribution. However, this exponential density is not appropriate for a large class of physical signals. Hence, a more sophisticated model, called hidden semiMarkov models (HSMM), are used where the state durations are modelled in some form. This paper presents new signal model for hidden semiMarkov models. This model is based on state duration dependant transition probabilities, where the state duration densities are modelled with parametric distribution functions. An adaptive algorithm for online identification of HSMMs based on our signal model is presented. This algorithm is based on the 'recursive prediction error' technique, where the parameter estimates are updated adaptively in a direction that maximizes the likelihood of parameter estimates. From the numerical results it is shown that the proposed algorithms can successfully estimate the true value of parameters. These results also show that our algorithm can adaptively track the parameter's changes in time.
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