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On the Use of U-Net for Dominant Melody Estimation in Polyphonic Music

机译:关于U-Net在多关音乐中的主导旋律估计的使用

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Estimation of dominant melody in polyphonic music remains a difficult task, even though promising breakthroughs have been done recently with the introduction of the Harmonic CQT and the use of fully convolutional networks. In this paper, we build upon this idea and describe how U-Net- a neural network originally designed for medical image segmentation - can be used to estimate the dominant melody in polyphonic audio. We propose in particular the use of an original layer-by-layer sequential training method, and show that this method used along with careful training data conditioning improve the results compared to plain convolutional networks.
机译:多相音乐中显性旋律的估计仍然是一项艰巨的任务,尽管最近在引入谐波CQT和完全卷积网络的使用中已经进行了有望的突破。在本文中,我们构建了这个想法,并描述了U-Net - 最初为医学图像分割设计的神经网络 - 可用于估计多关音频中的主导旋律。我们特别建议使用原始的逐层顺序训练方法,并表明该方法与仔细训练数据调节一起使用,与普通卷积网络相比,改善了结果。

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