Influence of various asymmetrical contextual factors for TTS in a low resource language

Nirmesh J. Shah, Mohammadi Zaki, H. Patil
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引用次数: 2

Abstract

The generalized statistical framework of Hidden Markov Model (HMM) has been successfully applied from the field of speech recognition to speech synthesis. In this paper, we have applied HMM-based Speech Synthesis (HTS) method to Gujarati (one of the official languages of India). Adaption and evaluation of HTS for Gujarati language has been done here. In addition, to understand the influence of asymmetrical contextual factors on quality of synthesized speech, we have conducted series of experiments. Evaluation of different HTS built for Gujarati speech using various asymmetrical contextual factors is done in terms of naturalness and speech intelligibility. From the experimental results, it is evident that when more weightage is given to left phoneme in asymmetrical contextual factor, HTS performance improves compared to conventional symmetrical contextual factors for both triphone and pentaphone case. Furthermore, we achieved best performance for Gujarati HTS with left-left-left-centre-right (i.e., LLLCR) contextual factors.
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低资源语言中各种不对称语境因素对TTS的影响
隐马尔可夫模型的广义统计框架已成功地从语音识别领域应用到语音合成领域。在本文中,我们将基于hmm的语音合成(HTS)方法应用于古吉拉特语(印度官方语言之一)。本文对古吉拉特语的HTS进行了改编和评价。此外,为了了解不对称语境因素对合成语音质量的影响,我们进行了一系列实验。利用不同的不对称语境因素对古吉拉特语构建的不同HTS进行了自然度和语音可理解度的评估。实验结果表明,无论在三声部还是五声部情况下,在不对称语境因素中增加左音素的权重,HTS的性能都比传统的对称语境因素有所提高。此外,我们在具有左-左-左-中-右(即LLLCR)背景因素的古吉拉特语HTS中取得了最佳表现。
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