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Nonnegative Matrix Partial Co-Factorization for Spectral and Temporal Drum Source Separation

机译:频谱和时间鼓源分离的非负矩阵部分协因子化

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We address a problem of separating drum sources from monaural mixtures of polyphonic music containing various pitched instruments as well as drums. We consider a spectrogram of music, described by a matrix where each row is associated with intensities of a frequency over time. We employ a joint decomposition to several spectrogram matrices that include two or more column-blocks of the mixture spectrograms (columns of mixture spectrograms are partitioned into 2 or more blocks) and a drum-only (drum solo playing) matrix constructed from various drums a priori. To this end, we apply nonnegative matrix partial co-factorization (NMPCF) to these target matrices, in which column-blocks of mixture spectrograms and the drum-only matrix are jointly decomposed, sharing a factor matrix partially, in order to determine common basis vectors that capture the spectral and temporal characteristics of drum sources. Common basis vectors learned by NMPCF capture spectral patterns of drums since they are shared in the decomposition of the drum-only matrix and accommodate temporal patterns of drums because repetitive characteristics are captured by factorizing column-blocks of mixture spectrograms (each of which is associated with different time periods). Experimental results on real-world commercial music signal demonstrate the performance of the proposed method.
机译:我们解决了将鼓源与包含各种音高乐器和鼓的单声道复音音乐混合物分离的问题。我们考虑一个音乐的频谱图,用一个矩阵描述,其中每一行与一段时间内的频率强度相关联。我们对几种频谱图矩阵进行了联合分解,其中包括两个或多个混合频谱图的列块(混合频谱图的列被划分为两个或多个块)和一个由多个鼓构成的仅鼓(鼓独奏)矩阵先验的。为此,我们将非负矩阵部分因子分解(NMPCF)应用于这些目标矩阵,其中混合频谱图的列块和仅鼓的矩阵被联合分解,部分共享一个因子矩阵,以确定共同基础捕获鼓源的频谱和时间特性的向量。 NMPCF学习的通用基向量捕获了鼓的频谱模式,因为它们在仅鼓的矩阵的分解中共享,并且适应了鼓的时间模式,因为重复特性是通过分解混合频谱图的列块来捕获的(每个都与不同的时间段)。真实商业音乐信号的实验结果证明了该方法的性能。

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