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Automatic Phonetic Transcription of Laughter and Its Application to Laughter Synthesis

机译:笑声的自动语音转录及其在笑声合成中的应用

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In this paper, automatic phonetic transcription of laughter is achieved with the help of Hidden Markov Models (HMMs). The models are evaluated in a speaker-independent way. Several measures to evaluate the quality of the transcriptions are discussed, some focusing on the recognized sequences (without paying attention to the segmentation of the phones), other only taking into account the segmentation boundaries (without involving the phonetic labels). Although the results are far from perfect recognition, it is shown that using this kind of automatic transcriptions does not impair too much the naturalness of laughter synthesis. The paper opens interesting perspectives in automatic laughter analysis as well as in laughter synthesis, as it will enable faster developments of laughter synthesis on large sets of laughter data.
机译:在本文中,借助隐马尔可夫模型(HMM)实现了笑声的自动语音转录。以与说话者无关的方式评估模型。讨论了评估转录质量的几种方法,其中一些侧重于识别的序列(不注意电话的分割),其他仅考虑了分割边界(不涉及语音标签)。尽管结果远非完美识别,但表明使用这种自动转录不会过多地影响笑声合成的自然性。本文将在自动笑声分析以及笑声合成中打开有趣的观点,因为它将使大笑声数据集上的笑声合成更快地发展。

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