非平稳信号分割的动态模型

William D. Penny, Stephen J. Roberts
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引用次数: 69

摘要

本文研究了由自回归(AR)模型产生观测值的隐马尔可夫模型(hmm)。整体模型执行非平稳谱分析,并自动将时间序列分割成离散的动态区域。由于HMM的学习对初始条件很敏感,我们使用卡尔曼滤波系数的聚类分析来初始化HMM模型。卡尔曼滤波实现的一个重要方面是在线估计状态噪声。这允许对每个不同动态状态的AR参数进行初始估计。然后用HMM模型对这些估计进行微调。该方法在一些合成问题和脑电图数据上得到了验证。
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Dynamic Models for Nonstationary Signal Segmentation

This paper investigates Hidden Markov Models (HMMs) in which the observations are generated from an autoregressive (AR) model. The overall model performs nonstationary spectral analysis and automatically segments a time series into discrete dynamic regimes. Because learning in HMMs is sensitive to initial conditions, we initialize the HMM model with parameters derived from a cluster analysis of Kalman filter coefficients. An important aspect of the Kalman filter implementation is that the state noise is estimated on-line. This allows for an initial estimation of AR parameters for each of the different dynamic regimes. These estimates are then fine-tuned with the HMM model. The method is demonstrated on a number of synthetic problems and on electroencephalogram data.

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