Emotional statistical parametric speech synthesis using LSTM-RNNs

Shumin An, Zhenhua Ling, Lirong Dai
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引用次数: 53

Abstract

This paper studies the methods for emotional statistical parametric speech synthesis (SPSS) using recurrent neural networks (RNN) with long short-term memory (LSTM) units. Two modeling approaches, i.e., emotion-dependent modeling and unified modeling with emotion codes, are implemented and compared by experiments. In the first approach, LSTM-RNN- based acoustic models are built separately for each emotion type. A speaker-independent acoustic model estimated using the speech data from multi-speakers is adopted to initialize the emotion-dependent LSTM-RNNS. Inspired by the speaker code techniques developed for speech recognition and speech synthesis, the second approach builds a unified LSTM-RNN-based acoustic model using the training data of a variety of emotion types. In the unified LSTM-RNN model, an emotion code vector is input to all model layers to indicate the emotion characteristics of current utterance. Experimental results on an emotional speech synthesis database with four emotion types (neutral style, happiness, anger, and sadness) show that both approaches achieve significant better naturalness of synthetic speech than HMM-based emotion- dependent modeling. The emotion-dependent modeling approach outperforms the unified modeling approach and the HMM-based emotion-dependent modeling in terms of the subjective emotion classification rates for synthetic speech. Furthermore, the emotion codes used by the unified modeling approach are capable of controlling the emotion type and intensity of synthetic speech effectively by interpolating and extrapolating the codes in the training set.
基于lstm - rnn的情绪统计参数语音合成
研究了基于长短期记忆单元的递归神经网络(RNN)的情绪统计参数语音合成(SPSS)方法。实现了情感依赖建模和情感编码统一建模两种建模方法,并通过实验进行了比较。在第一种方法中,针对每种情绪类型分别建立基于LSTM-RNN的声学模型。采用一个独立于说话人的声学模型来初始化情绪依赖的LSTM-RNNS。第二种方法受到用于语音识别和语音合成的说话人编码技术的启发,利用各种情绪类型的训练数据建立了一个统一的基于lstm - rnn的声学模型。在统一的LSTM-RNN模型中,每个模型层都输入一个情感编码向量来表示当前话语的情感特征。在包含四种情绪类型(中性、快乐、愤怒和悲伤)的情绪语音合成数据库上的实验结果表明,两种方法的合成语音的自然度都明显优于基于hmm的情绪依赖建模。在主观情绪分类率方面,情感依赖建模方法优于统一建模方法和基于hmm的情感依赖建模方法。此外,统一建模方法所使用的情感编码通过对训练集中的情感编码进行内插和外推,能够有效地控制合成语音的情感类型和强度。
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