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Multiple fundamental frequency estimation based on sparse representations in a structured dictionary

机译:基于稀疏表示的结构化字典中的多基频估计

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Automatic transcription of polyphonic music is an important task in audio signal processing, which involves identifying the fundamental frequencies (pitches) of several notes played at a time. Its difficulty stems from the fact that harmonics of different notes tend to overlap, especially in western music. This causes a problem in assigning the harmonics to their true fundamental frequencies, and in deducing spectra of several notes from their sum. We present here a multi-pitch estimation algorithm based on sparse representations in a structured dictionary, suitable for the spectra of music signals. In the vectors of this dictionary, most of the elements are forced to be zero except the elements that represent the fundamental frequencies and their harmonics. Thanks to the structured dictionary, the algorithm does not require a diverse or a large dataset for training and is computationally more efficient than alternative methods. The performance of the proposed structured dictionary transcription system is empirically examined, and its advantage is demonstrated compared to alternative dictionary learning methods.
机译:和弦音乐的自动转录是音频信号处理中的重要任务,涉及识别一次演奏的多个音符的基本频率(音高)。它的困难源于不同音符的和声趋于重叠的事实,尤其是在西方音乐中。这在将谐波分配给它们的真实基频以及从它们的和推导几个音符的频谱方面引起问题。我们在这里提出一种基于结构化字典中的稀疏表示的多音高估计算法,适用于音乐信号的频谱。在此字典的向量中,除表示基本频率及其谐波的元素外,大多数元素都被迫设为零。多亏了结构化字典,该算法不需要用于训练的多样化或大型数据集,并且在计算上比替代方法更有效。经验性地检查了所提出的结构化字典转录系统的性能,并且与其他字典学习方法相比,它的优势得到了证明。

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