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Greek folk music classification into two genres using lyrics and audio via canonical correlation analysis

机译:希腊民间音乐通过规范相关分析使用歌词和音频分为两种类型

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We are interested in Greek folk music genre classification by resorting to canonical correlation analysis (CCA). Here, the genre is related to the place of origin of the song. The CCA learns a linear transformation of the song lyrics descriptors that is highly correlated with their genre labels as well as another linear transformation of the audio features extracted from music recordings, which is maximally correlated with their genre labels. In the latter task, thanks to the deep CCA (DCCA), deep nonlinear transformations of the audio features are learnt, which are maximally correlated with the genre labels. Experimental findings are disclosed for a two-class genre recognition problem, employing folk songs originated from Pontus and Asia Minor. It is demonstrated that the CCA achieves an average accuracy of 97.02% across the 5 folds, when the term frequency-inverse document frequency features model the song lyrics. By modeling the music signal of each song with 28 mel-frequency cepstral coefficients (MFCCs) extracted from each frame and averaged over all frames, the average accuracy of the CCA drops to 72.9% across the 5 folds. The DCCA yields an accuracy of 69% for audio-based genre recognition.
机译:我们对希腊民间音乐流派分类感兴趣,通过诉诸规范相关性分析(CCA)。在这里,流派与歌曲的原产地有关。 CCA了解歌曲歌词描述符的线性转换,这些描述符与它们的流派标签高度相关,以及从音乐录制中提取的音频功能的另一种线性变换,其与其类型标签最大限度地相关。在后一项任务中,由于深入的CCA(DCCA),学习了音频功能的深度非线性变换,这与流派标签最大限度地相关。披露了两类类型识别问题的实验结果,采用了源于Pontus和亚洲的民歌。结果表明,CCA在频率 - 逆文档频率模型模型时,跨越5倍的平均精度为97.02%。通过用来自每帧提取的28个熔体频率谱系齐数(MFCC)的每歌的音乐信号建模,并在所有帧上平均,CCA的平均精度下降到5倍的72.9%。 DCCA对基于音频的类型识别产生69%的准确性。

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