Cross validation and Minimum Generation Error for improved model clustering in HMM-based TTS

Fenglong Xie, Yi-Jian Wu, F. Soong
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引用次数: 1

Abstract

In HMM-based speech synthesis, context-dependent hidden Markov model (HMM) is widely used for its capability to synthesize highly intelligible and fairly smooth speech. However, to train HMMs of all possible contexts well is difficult, or even impossible, due to the intrinsic, insufficient training data coverage problem. As a result, thus trained models may over fit and their capability in predicting any unseen context in test is highly restricted. Recently cross-validation (CV) has been explored and applied to the decision tree-based clustering with the Maximum-Likelihood (ML) criterion and showed improved robustness in TTS synthesis. In this paper we generalize CV to decision tree clustering but with a different, Minimum Generation Error (MGE), criterion. Experimental results show that the generalization to MGE results in better TTS synthesis performance than that of the baseline systems.
基于hmm的TTS改进模型聚类的交叉验证和最小生成误差
在基于HMM的语音合成中,上下文相关的隐马尔可夫模型(HMM)因其能够合成高度可理解且相当流畅的语音而被广泛应用。然而,由于固有的训练数据覆盖不足的问题,训练所有可能上下文的hmm是困难的,甚至是不可能的。因此,这样训练的模型可能会过度拟合,并且它们在预测测试中任何未知上下文的能力受到高度限制。近年来,交叉验证(CV)已被探索并应用于基于决策树的最大似然(ML)准则聚类,并在TTS合成中显示出更好的鲁棒性。在本文中,我们将CV推广到决策树聚类,但使用了不同的最小生成误差(MGE)准则。实验结果表明,对MGE进行泛化后的TTS综合性能优于基线系统。
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