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Signal Denoising Using Wavelet Packet Hidden Markov Model

机译:小波包隐马尔可夫模型的信号降噪

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This paper presents a new framework for signal denoising based on wavelet packet Hidden Markov models (HMMs). The new framework enables us to concisely model the statistical dependencies and nonGaussian statistics encountered in real-world signals, and enables us to get a more reliable and local model using blocks. Wavelet Packet HMMs are designed with the intrinsic properties of wavelet transform and provide powerful yet tractable probabilistic signal models. In this paper, we propose a novel wavelet domain HMM using blocks to strike a delicate balance between improving spatial adaptability of contextual HMM (CHMM) and modeling a more reliable HMM. Each wavelet coefficient is modeled as a Gaussian mixture model, and the dependencies among wavelet coefficients in each subband are described by a context structure, then the structure is modified by blocks which are connected areas in a scale conditioned on the same context. Before denoising a signal, efficient Expectation Maximization (EM) algorithms are developed for fitting the HMMs to observational signal data. Parameters of trained HMM are used to modify wavelet coefficients according to the rule of minimizing the mean squared error (MSE) of the signal. Then, reverse wavelet transformation is utilized to modified wavelet coefficients. Finally, experimental results are given. The results show that block hidden Markov model (BHMM) is a powerful yet simple tool in signal denoising.
机译:本文提出了一种基于小波包隐马尔可夫模型(HMM)的信号去噪新框架。新框架使我们能够对现实信号中遇到的统计依赖性和非高斯统计进行简洁的建模,并使我们能够使用块获​​得更可靠的局部模型。小波包HMM具有小波变换的固有特性,可提供强大而易处理的概率信号模型。在本文中,我们提出了一种新颖的小波域HMM,它使用块在提高上下文HMM(CHMM)的空间适应性与建模更可靠的HMM之间达成微妙的平衡。将每个小波系数建模为高斯混合模型,并通过上下文结构描述每个子带中的小波系数之间的相关性,然后通过以相同上下文为条件的比例连接区域的块来修改该结构。在对信号进行去噪之前,已经开发了有效的期望最大化(EM)算法,用于将HMM拟合到观测信号数据。训练有素的HMM的参数用于根据最小化信号均方误差(MSE)的规则修改小波系数。然后,利用逆小波变换来修正小波系数。最后给出了实验结果。结果表明,块隐马尔可夫模型(BHMM)是一种强大而简单的信号去噪工具。

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