Structured encoding of the singing voice using prior knowledge of the musical score

Y.E. Kim
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引用次数: 12

Abstract

The human voice is the most difficult musical instrument to simulate convincingly. Yet a great deal of progress has been made in voice coding, the parameterization and re-synthesis of a source signal according to an assumed voice model. Source-filter models of the human voice, particularly linear predictive coding (LPC), are the basis of most low bit rate (speech) coding techniques in use today. This paper introduces a technique for coding the singing voice using LPC and prior knowledge of the musical score to aid in the process of encoding, reducing the amount of data required to represent the voice. This approach advances the singing voice closer towards a structured audio model in which musical parameters such as pitch, duration, and phonemes are represented orthogonally to the synthesis technique and can thus be modified prior to re-synthesis.
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利用乐谱的先验知识对歌声进行结构化编码
人声是最难令人信服地模拟的乐器。然而,在语音编码、参数化和根据假设的语音模型重新合成源信号方面已经取得了很大的进展。人类声音的源滤波器模型,特别是线性预测编码(LPC),是目前使用的大多数低比特率(语音)编码技术的基础。本文介绍了一种利用LPC和乐谱的先验知识来编码歌唱声音的技术,以帮助编码过程,减少了表示声音所需的数据量。这种方法使歌唱声音更接近于结构化的音频模型,在这种模型中,音高、持续时间和音素等音乐参数与合成技术正交,因此可以在重新合成之前进行修改。
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