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Singer based classification of song dataset using vocal signature inherent in signal

机译:基于歌曲数据集的歌手使用信号中固有的声乐签名分类

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Singer based classification of song data is important in the applications like, organized archival and indexing of music data, music retrieval. In a song, singing voice is mixed with accompanying instrument signal. To extract the vocal characteristics of the singer, the effect of non-voiced part is to be minimized. In this work a simple methodology is proposed to remove the non-voiced segments and to reduce the impression of instruments from the voice-dominating signal. To extract the vocal signature, proposed features extract the variation pattern of zero crossing rate and short term energy. In broad sense, the features try to capture the range of pitch and energy over which a singer mostly operates. This is motivated by the way a human being tries to identify a singer. Finally, singer based classification is done using multi-layer perceptron network. Experiment is carried out with artist20 dataset and 63% classification accuracy is achieved. Comparison with reported works on the same dataset shows that the performance of the proposed simple methodology is better than the majority and very close to others.
机译:基于歌曲的歌曲数据分类在诸如诸如音乐数据的音乐数据的档案和索引等应用中很重要。在一首歌中,唱歌声音与伴随仪器信号混合。为了提取歌手的声音特征,将最小化非浊件部分的效果。在这项工作中,提出了一种简单的方法来消除非声音段,并减少语音主导信号的仪器的印象。为了提取声乐签名,提出的特征提取过零率和短期能量的变化模式。在广泛的意义上,特征试图捕获歌手主要经营的音高和能量范围。这是通过人类试图识别歌手的方式激励。最后,使用多层Perceptron网络完成了基于歌手的分类。实验与Artist20数据集进行,实现了63%的分类准确性。与报告的工作相同数据集的比较表明,所提出的简单方法的性能优于大多数,非常接近别人。

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