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Semantic Computing in Scalable Text-To-Speech System

机译:可扩展文本到语音系统中的语义计算

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Because of diversity of hardware environments, building scalable text-to-speech system is an important issue of Corpus-based text-to-speech system. This paper proposes and analyses three semantic computing problems of building scalable text to speech system: similarity calculation, granular computing and automated instances-pruning process framework. According to these, an acoustic clustering algorithm-NuClustering-VPA and a data ranking algorithm-StaRp-VPA are constructed to pruning synthesis instances. In experiments, the naturalness scored by MOS remains almost unchanged when less than 50% instances are pruned off using these two algorithms and the MOS does not severely degrade when reduction rate is above 50% using StaRp-VPA algorithm.
机译:由于硬件环境的多样性,构建可扩展的文本到语音系统是基于语料库的文本到语音系统的重要问题。本文提出并分析了三种语义计算问题,将可扩展文本构建到语音系统:相似性计算,粒度计算和自动化实例 - 修剪过程框架。根据这些,构建了一种声学聚类算法-VPA和数据排名算法-TARP-VPA以修剪合成实例。在实验中,当使用这两种算法缩小的情况下,MOS被缩小的情况小于50%的实例时,MOS被遗留的自然度几乎保持不变,并且当使用STARP-VPA算法时,MOS在减少率高于50%时不会严重降低。

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