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Relative Entropy Rate Based Multiple Hidden Markov Model Approximation

机译:基于相对熵的多重隐马尔可夫模型逼近

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This paper proposes a novel relative entropy rate (RER) based approach for multiple HMM (MHMM) approximation of a class of discrete-time uncertain processes. Under different uncertainty assumptions, the model design problem is posed either as a min-max optimisation problem or stochastic minimization problem on the RER between joint laws describing the state and output processes (rather than the more usual RER between output processes). A suitable filter is proposed for which performance results are established which bound conditional mean estimation performance and show that estimation performance improves as the RER is reduced. These filter consistency and convergence bounds are the first results characterizing multiple HMM approximation performance and suggest that joint RER concepts provide a useful model selection criteria. The proposed model design process and MHMM filter are demonstrated on an important image processing dim-target detection problem.
机译:本文针对一类离散时间不确定过程的多重HMM(MHMM)逼近,提出了一种基于相对熵速率(RER)的新颖方法。在不同的不确定性假设下,模型设计问题要么是描述状态和输出过程的联合定律之间的RER的最小-最大优化问题,要么是随机最小化问题(而不是输出过程之间更常见的RER)。提出了一种合适的滤波器,针对该滤波器建立了性能结果,该结果限制了条件均值估计性能,并表明随着RER的降低,估计性能会提高。这些滤波器的一致性和收敛范围是表征多种HMM逼近性能的第一项结果,并表明联合RER概念提供了有用的模型选择标准。提出的模型设计过程和MHMM滤波器针对一个重要的图像处理昏暗目标检测问题进行了演示。

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