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引用次数: 5

摘要

本文提出了歌唱音质分类的相关问题。为此,构建了一个由歌手样本录音组成的数据库,并从训练有素和未训练的歌手录制的声音中提取参数。参数化过程是基于嗓音的声源和共振分析。对这些参数进行物理解释和统计分析,以减少它们的数量。统计分析基于费雪统计量。这样就形成了歌唱声音的特征向量。基于神经网络和粗糙集的决策系统被用于语音类型和语音质量分类。比较了两种决策系统自动分类的结果。判断自动分类语音类型/质量的可能性。所提出的方法为辨别训练有素和未经训练的歌手提供了手段。
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Automatic classification of singing voice quality
In the paper problems related to the classification of singing voice quality are presented. For this purpose a database consisting of singers' sample recordings is constructed and parameters are extracted from recorded voice of trained and untrained singers. The parameterization process is based on both voice source and formant analysis of a singing voice. These parameters are explained as to their physical interpretation and analyzed statistically in order to diminish their number. The statistical analysis is based on the Fisher statistic. In such a way a feature vector of a singing voice is formed. Decision systems based on neutral networks and rough sets are utilized in the context of the voice type and voice quality classification. Results obtained in the automatic classification performed by both decision systems are compared. A possibility to classify automatically type/quality of voice is judged. The methodology proposed provides means for discerning trained and untrained singers.
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