Coding with partially hidden Markov models

Søren Forchhammer, J. Rissanen
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引用次数: 8

Abstract

Partially hidden Markov models (PHMM) are introduced. They are a variation of the hidden Markov models (HMM) combining the power of explicit conditioning on past observations and the power of using hidden states. (P)HMM may be combined with arithmetic coding for lossless data compression. A general 2-part coding scheme for given model order but unknown parameters based on PHMM is presented. A forward-backward reestimation of parameters with a redefined backward variable is given for these models and used for estimating the unknown parameters. Proof of convergence of this reestimation is given. The PHMM structure and the conditions of the convergence proof allows for application of the PHMM to image coding. Relations between the PHMM and hidden Markov models (HMM) are treated. Results of coding bi-level images with the PHMM coding scheme is given. The results indicate that the PHMM can adapt to instationarities in the images.
部分隐马尔可夫模型编码
介绍了部分隐马尔可夫模型(PHMM)。它们是隐马尔可夫模型(HMM)的一种变体,结合了对过去观测的显式条件反射的能力和使用隐藏状态的能力。HMM可与算术编码相结合,实现无损数据压缩。提出了一种基于PHMM的模型阶数未知的两部分编码方案。对于这些模型,给出了带重新定义的后向变量的参数前向后向重估计,并用于估计未知参数。给出了这种重估计的收敛性证明。PHMM的结构和收敛性证明的条件使得PHMM可以应用于图像编码。研究了隐马尔可夫模型与PHMM模型之间的关系。给出了用PHMM编码方案对双级图像进行编码的结果。结果表明,PHMM能够适应图像中的不稳定性。
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