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Hidden Markov models in biomedical signal processing

机译:生物医学信号处理中的隐马尔可夫模型

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Hidden Markov Models (HMM) are statistical models used very successfully and effectively in speech processing. The model is however a general model for stochastic processes and may thus be applied to a large variety of biomedical signals. The paper provides an in depth tutorial on HMM and its applications to biomedical signal processing. Discrete Density (DD-HMM) and Continuous Density HMM (CD-HMM) are presented. The various algorithms required for training the model, for estimating the optimal state sequence and the observation probabilities are discussed. The HMMs have not been widely applied to biomedical signal processing. The paper reviews some of the applications, and discusses potential applications.
机译:隐马尔可夫模型(HMM)是在语音处理中非常成功和有效地使用的统计模型。但是,该模型是随机过程的通用模型,因此可以应用于多种生物医学信号。本文提供了有关HMM及其在生物医学信号处理中的应用的深入教程。介绍了离散密度(DD-HMM)和连续密度HMM(CD-HMM)。讨论了训练模型,估计最佳状态序列和观察概率所需的各种算法。 HMM尚未广泛应用于生物医学信号处理。本文回顾了一些应用程序,并讨论了潜在的应用程序。

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