首页> 外文期刊>Inteligencia Artificial : Ibero-American Journal of Artificial Intelligence >Learning Hidden Markov Models with Hidden Markov Trees as Observation Distributions
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Learning Hidden Markov Models with Hidden Markov Trees as Observation Distributions

机译:以隐马尔可夫树为观察分布学习隐马尔可夫模型

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Hidden Markov models have been found very useful for a wide range of applications in artificial intelligence. The wavelet transform arises as a new tool for signal and image analysis, with a special emphasis on nonlinearities and nonstationarities. However, learning models for wavelet coefficients have been mainly based on fixed-length sequences. We propose a novel learning architecture for sequences analyzed on a short-term basis, but not assuming stationarity within each frame. Long-term dependencies are modeled with a hidden Markov model which, in each internal state, deals with the local dynamics in the wavelet domain using a hidden Markov tree. The training algorithms for all the parameters in the composite model are developed using the expectation-maximization framework. This novel learning architecture can be useful for a wide range of applications. We detail experiments with real data for speech recognition. In the results, recognition rates were better than the state of the art technologies for this task
机译:已发现隐马尔可夫模型对于人工智能中的广泛应用非常有用。小波变换作为信号和图像分析的新工具应运而生,特别强调非线性和非平稳性。但是,小波系数的学习模型主要基于固定长度序列。对于短期分析的序列,我们提出了一种新颖的学习架构,但并不假设每个帧内的平稳性。用隐马尔可夫模型对长期依赖性进行建模,该隐马尔可夫模型在每个内部状态下都使用隐马尔可夫树处理小波域中的局部动力学。使用期望最大化框架开发了复合模型中所有参数的训练算法。这种新颖的学习体系结构可用于广泛的应用程序。我们详细介绍了具有真实数据的语音识别实验。结果,此任务的识别率优于最新技术

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