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Exploiting sparsity in stranded hidden Markov models for automatic speech recognition

机译:利用滞留隐马尔可夫模型中的稀疏性进行自动语音识别

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We have recently proposed the stranded HMM to achieve a more accurate representation of heterogeneous data. As opposed to the regular Gaussian mixture HMM, the stranded HMM explicitly models the relationships among the mixture components. The transitions among mixture components encode possible trajectories of acoustic features for speech units. Accurately representing the underlying transition structure is crucial for the stranded HMM to produce an optimal recognition performance. In this paper, we propose to learn the stranded HMM structure by imposing sparsity constraints. In particular, entropic priors are incorporated in the maximum a posteriori (MAP) estimation of the mixture transition matrices. The experimental results showed that a significant improvement in model sparsity can be obtained with a slight sacrifice of the recognition accuracy.
机译:我们最近提出了搁浅的HMM,以实现异构数据的更准确表示。与常规的高斯混合HMM相反,绞合HMM显式地模拟了混合成分之间的关​​系。混合成分之间的过渡编码语音单元的声学特征的可能轨迹。准确表示基本的过渡结构对于滞留的HMM产生最佳识别性能至关重要。在本文中,我们建议通过施加稀疏约束来学习滞留的HMM结构。特别地,将熵先验合并到混合跃迁矩阵的最大后验(MAP)估计中。实验结果表明,在略微牺牲识别精度的情况下,可以获得模型稀疏性的显着改善。

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