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首页> 外文期刊>IEEE transactions on audio, speech and language processing >Musical Genre Classification Using Nonnegative Matrix Factorization-Based Features
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Musical Genre Classification Using Nonnegative Matrix Factorization-Based Features

机译:使用基于非负矩阵分解的特征进行音乐体裁分类

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摘要

Nonnegative matrix factorization (NMF) is used to derive a novel description for the timbre of musical sounds. Using NMF, a spectrogram is factorized providing a characteristic spectral basis. Assuming a set of spectrograms given a musical genre, the space spanned by the vectors of the obtained spectral bases is modeled statistically using mixtures of Gaussians, resulting in a description of the spectral base for this musical genre. This description is shown to improve classification results by up to 23.3% compared to MFCC-based models, while the compression performed by the factorization decreases training time significantly. Using a distance-based stability measure this compression is shown to reduce the noise present in the data set resulting in more stable classification models. In addition, we compare the mean squared errors of the approximation to a spectrogram using independent component analysis and nonnegative matrix factorization, showing the superiority of the latter approach.
机译:非负矩阵分解(NMF)用于导出音乐音色的新颖描述。使用NMF,可以对频谱图进行分解,以提供特征频谱基础。假设给定音乐风格的一组频谱图,则使用高斯混合模型对获得的频谱基础的矢量所跨越的空间进行建模,从而获得对该音乐类型的频谱基础的描述。与基于MFCC的模型相比,该描述可将分类结果提高多达23.3%,而因数分解执行的压缩可显着减少训练时间。通过使用基于距离的稳定性测度,可以证明这种压缩可以减少数据集中存在的噪声,从而使分类模型更稳定。此外,我们使用独立分量分析和非负矩阵分解将近似值的均方误差与频谱图进行了比较,显示了后一种方法的优越性。

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