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首页> 外文期刊>IEEE Transactions on Signal Processing >Music Analysis Using Hidden Markov Mixture Models
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Music Analysis Using Hidden Markov Mixture Models

机译:使用隐马尔可夫混合模型进行音乐分析

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摘要

We develop a hidden Markov mixture model based on a Dirichlet process (DP) prior, for representation of the statistics of sequential data for which a single hidden Markov model (HMM) may not be sufficient. The DP prior has an intrinsic clustering property that encourages parameter sharing, and this naturally reveals the proper number of mixture components. The evaluation of posterior distributions for all model parameters is achieved in two ways: 1) via a rigorous Markov chain Monte Carlo method; and 2) approximately and efficiently via a variational Bayes formulation. Using DP HMM mixture models in a Bayesian setting, we propose a novel scheme for music analysis, highlighting the effectiveness of the DP HMM mixture model. Music is treated as a time-series data sequence and each music piece is represented as a mixture of HMMs. We approximate the similarity of two music pieces by computing the distance between the associated HMM mixtures. Experimental results are presented for synthesized sequential data and from classical music clips. Music similarities computed using DP HMM mixture modeling are compared to those computed from Gaussian mixture modeling, for which the mixture modeling is also performed using DP. The results show that the performance of DP HMM mixture modeling exceeds that of the DP Gaussian mixture modeling.
机译:我们基于Dirichlet过程(DP)事先开发了一个隐马尔可夫混合模型,用于表示顺序数据的统计数据,对于这些数据,单个隐马尔可夫模型(HMM)可能不够。 DP优先级具有固有的聚类属性,可鼓励参数共享,并且自然可以揭示适当数量的混合组分。通过以下两种方法可以评估所有模型参数的后验分布:1)通过严格的马尔可夫链蒙特卡洛方法;和2)通过变数贝叶斯公式近似有效地进行。在贝叶斯环境中使用DP HMM混合模型,我们提出了一种音乐分析的新方案,突出了DP HMM混合模型的有效性。音乐被视为时间序列数据序列,每个音乐片段均表示为HMM的混合。我们通过计算关联的HMM混合之间的距离来近似估计两个音乐作品的相似性。给出了针对合成顺序数据和来自古典音乐剪辑的实验结果。将使用DP HMM混合模型计算出的音乐相似度与根据高斯混合模型计算出的相似度进行比较,为此,也使用DP进行了混合建模。结果表明,DP HMM混合建模的性能超过了DP高斯混合建模的性能。

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