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On-line estimation of hidden Markov model parameters based on the Kullback-Leibler information measure

机译:基于Kullback-Leibler信息测度的隐马尔可夫模型参数在线估计

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摘要

Sequential or online hidden Markov model (HMM) signal processing schemes are derived, and their performance is illustrated by simulation. The online algorithms are sequential expectation maximization (EM) schemes and are derived by using stochastic approximations to maximize the Kullback-Leibler information measure. The schemes can be implemented either as filters or fixed-lag or sawtooth-lag smoothers. They yield estimates of the HMM parameters including transition probabilities, Markov state levels, and noise variance. In contrast to the offline EM algorithm (Baum-Welch scheme), which uses the fixed-interval forward-backward scheme, the online schemes have significantly reduced memory requirements and improved convergence, and they can estimate HMM parameters that vary slowly with time or undergo infrequent jump changes. Similar techniques are used to derive online schemes for extracting finite-state Markov chains imbedded in a mixture of white Gaussian noise (WGN) and deterministic signals of known functional form with unknown parameters.
机译:推导了顺序或在线隐马尔可夫模型(HMM)信号处理方案,并通过仿真说明了其性能。在线算法是顺序期望最大化(EM)方案,通过使用随机逼近来最大化Kullback-Leibler信息量度而得出。该方案既可以实现为滤波器,也可以实现为固定滞后或锯齿滞后平滑器。他们得出HMM参数的估计值,包括过渡概率,马尔可夫状态水平和噪声方差。与使用固定间隔向前-向后方案的离线EM算法(Baum-Welch方案)相比,在线方案显着减少了内存需求并提高了收敛性,并且它们可以估计随时间缓慢变化或经历的HMM参数。跳变很少。使用类似的技术来导出在线方案,以提取嵌入在高斯白噪声(WGN)和具有未知参数的已知功能形式的确定性信号的混合物中的有限状态马尔可夫链。

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