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Monophonic Singing Voice Separation Based on Deep Learning

机译:基于深度学习的单声道歌声分离

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The traditional monophonic singing voice separation system usually consists of two modules: melody extraction and time-frequency masking. In recent years, with the rapid development of neural networks, end-to-end music separation system that based on deep learning has become more and more popular. Deep neural networks are very useful for processing complex nonlinear data, this paper describes a system based on the framework of the traditional separation system, which uses ResNet to extract the melody of music signals, and combines NMF's soft masking separation algorithm. Compared with the existing module, our separation system is proved that can get better separation effect.
机译:传统的单声道歌声分离系统通常由两个模块组成:旋律提取和时频掩蔽。近年来,随着神经网络的迅速发展,基于深度学习的端到端音乐分离系统变得越来越流行。深度神经网络对于处理复杂的非线性数据非常有用,本文介绍了一种基于传统分离系统框架的系统,该系统使用ResNet提取音乐信号的旋律,并结合了NMF的软掩膜分离算法。与现有模块相比,我们的分离系统被证明可以获得更好的分离效果。

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