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A maximum a posteriori approach to speaker adaptation using thetrended hidden Markov model

机译:使用趋势隐马尔可夫模型的说话人适应性的最大后验方法

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A formulation of the maximum a posteriori (MAP) approach to speaker adaptation is presented with use of the trended or nonstationary-state hidden Markov model (HMM), where the Gaussian means in each HMM state are characterized by time-varying polynomial trend functions of the state sojourn time. Assuming uncorrelatedness among the polynomial coefficients in the trend functions, we have obtained analytical results for the MAP estimates of the parameters including time-varying means and time-invariant precisions. We have implemented a speech recognizer based on these results in speaker adaptation experiments using the TI46 corpora. The experimental evaluation demonstrates that the trended HMM, with use of either the linear or the quadratic polynomial trend function, consistently outperforms the conventional, stationary-state HMM. The evaluation also shows that the unadapted, speaker-independent models are outperformed by the models adapted by the MAP procedure under supervision with as few as a single adaptation token. Further, adaptation of polynomial coefficients alone is shown to be better than adapting both polynomial coefficients and precision matrices when fewer than four adaptation tokens are used, while the reverse is found with a greater number of adaptation tokens
机译:利用趋势或非稳态隐马尔可夫模型(HMM)提出了最大后验(MAP)方法用于说话人适应的方法,其中每个HMM状态下的高斯均值均由的时变多项式趋势函数表征。国家逗留时间。假设趋势函数中多项式系数之间的不相关性,我们已经获得了包括时变均值和时不变精度在内的参数MAP估计的解析结果。我们已经使用TI46语料库在说话人自适应实验中基于这些结果实现了语音识别器。实验评估表明,使用线性或二次多项式趋势函数的趋势HMM始终优于常规的稳态HMM。评估还显示,在MAP程序的监督下,仅需一个适应标记就可以适应不适应,与说话者无关的模型。此外,当使用少于四个适应令牌时,仅对多项式系数的适应比对多项式系数和精度矩阵的适应都好,而在相反情况下,使用更多数目的适应令牌

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