Forward Attention in Sequence- To-Sequence Acoustic Modeling for Speech Synthesis

Jing-Xuan Zhang, Zhenhua Ling, Lirong Dai
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引用次数: 79

Abstract

This paper proposes a forward attention method for the sequence-to-sequence acoustic modeling of speech synthesis. This method is motivated by the nature of the monotonic alignment from phone sequences to acoustic sequences. Only the alignment paths that satisfy the monotonic condition are taken into consideration at each decoder timestep. The modified attention probabilities at each timestep are computed recursively using a forward algorithm. A transition agent for forward attention is further proposed, which helps the attention mechanism to make decisions whether to move forward or stay at each decoder timestep. Experimental results show that the proposed forward attention method achieves faster convergence speed and higher stability than the baseline attention method. Besides, the method of forward attention with transition agent can also help improve the naturalness of synthetic speech and control the speed of synthetic speech effectively.
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语音合成中序列对序列声学建模的前向注意
提出了一种语音合成中序列对序列声学建模的前向注意方法。这种方法的动机是从电话序列到声学序列的单调排列的性质。在每个解码器时间步长只考虑满足单调条件的对齐路径。使用前向算法递归地计算每个时间步上修改后的注意概率。进一步提出了前向注意过渡代理,帮助注意机制在每个解码器时间步长上决定是继续前进还是停留。实验结果表明,所提出的前向注意方法比基线注意方法具有更快的收敛速度和更高的稳定性。此外,添加过渡剂的前向注意方法也有助于提高合成语音的自然度,有效地控制合成语音的语速。
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