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Predominant Instrument Recognition in Polyphonic Music Using GMM-DNN Framework

机译:使用GMM-DNN框架的和弦音乐中的主要乐器识别

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In this paper, the predominant instrument recognition in polyphonic music is addressed using timbral descriptors in three frameworks-Gaussian mixture model (GMM), deep neural network (DNN), and hybrid GMM-DNN. Three sets of features, namely, mel-frequency cepstral coefficient (MFCC) features, modified group delay features (MODGDF), and lowlevel timbral features are computed, and the experiments are conducted with individual set and its early integration. Performance is systematically evaluated using IRMAS dataset. The results obtained for GMM, DNN, and GMM-DNN are 65.60%, 85.60%, and 93.20%, respectively on timbral feature fusion. Architectural choice of DNN using GMM derived features on the feature fusion paradigm showed improvement in the system performance. Thus, the proposed experiments demonstrate the potential of timbral descriptors and DNN based systems in recognizing predominant instrument in polyphonic music.
机译:在本文中,在三个框架-Gaussian混合模型(GMM),深神经网络(DNN)和混合GMM-DNN中,使用TIMBROL描述符来解决复音音乐中的主要仪器识别。三组特征,即熔融频率谱系码(MFCC)特征,修改的组延迟特征(MODGDF)和Lowlevel Timbral特征,并且实验用个体集和早期集成进行。使用Irmas数据集系统地评估性能。对于GMM,DNN和GMM-DNN获得的结果分别在Timbral特征融合中分别为65.60%,85.60%和93.20%。使用GNN使用GMM衍生功能的DNN建筑选择在特征融合范式上显示系统性能的提高。因此,所提出的实验表明了Timbral描述符和基于DNN基于DNN的潜力在识别Polyphonic音乐中的主要仪器中的潜力。

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