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Towards High-Quality Next-Generation Text-to-Speech Synthesis: A Multidomain Approach by Automatic Domain Classification

机译:迈向高质量下一代语音合成:通过自动域分类的多域方法

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This paper is a contribution to the recent advancements in the development of high-quality next generation text-to-speech (TTS) synthesis systems. Two of the hottest research topics in this area are oriented towards the improvement of speech expressiveness and flexibility of synthesis. In this context, this paper presents a new TTS strategy called multidomain TTS (MD-TTS) for synthesizing among different domains. Although the multidomain philosophy has been widely applied in spoken language systems, few research efforts have been conducted to extend it to the TTS field. To do so, several proposals are described in this paper. First, a text classifier (TC) is included in the classic TTS architecture in order to automatically conduct the selection of the most appropriate domain for synthesizing the input text. In contrast to classic topic text classification tasks, the MD-TTS TC should not only consider the contents of text but also its structure. To this end, this paper introduces a new text modeling scheme based on an associative relational network, which represents texts as a directional weighted word-based graph. The conducted experiments validate the proposal in terms of both objective (TC efficiency) and subjective (perceived synthetic speech quality) evaluation criteria.
机译:本文对高质量下一代文本语音转换(TTS)合成系统的最新发展做出了贡献。该领域最热门的两个研究主题是提高语音表达能力和合成灵活性。在这种情况下,本文提出了一种新的TTS策略,称为多域TTS(MD-TTS),用于在不同域之间进行合成。尽管多域哲学已在口语系统中得到广泛应用,但很少进行研究以将其扩展到TTS领域。为此,本文描述了一些建议。首先,文本分类器(TC)包含在经典的TTS体系结构中,以便自动进行最合适域的选择以合成输入文本。与经典主题文本分类任务相比,MD-TTS TC不仅应考虑文本的内容,还应考虑其结构。为此,本文介绍了一种基于关联关系网络的新文本建模方案,该方案将文本表示为基于方向加权词的图形。进行的实验从客观(TC效率)和主观(感知到的合成语音质量)评估标准方面验证了该建议。

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