深层神经网络显式结构编码对符号音乐生成的影响

K. Chen, Weilin Zhang, S. Dubnov, Gus G. Xia, Wei Li
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引用次数: 28

摘要

随着近年来人工神经网络的突破,深度生成模型已经成为计算创造力的主要技术之一。尽管在图像和短序列生成方面取得了很好的进展,但由于作品结构复杂,符号音乐生成仍然是一个具有挑战性的问题。在本研究中,我们试图解决受给定和弦进行约束的旋律生成问题。特别地,我们通过比较两种顺序生成模型:LSTM(一种RNN)和WaveNet(扩展时间- cnn)来探索音乐结构的显式结构编码的效果。据我们所知,这是第一次将WaveNet应用于符号音乐生成的研究,也是第一次系统的比较了time - cnn和RNN在音乐生成中的应用。我们进行了一项调查,以评估我们这代人,并在音乐模式发现中实现了变量马尔可夫甲骨文。实验结果表明,使用扩展卷积层堆栈对结构进行更明确的编码可以显著提高性能,并且在生成过程中对底层和弦进行全局编码可以获得更大的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effect of Explicit Structure Encoding of Deep Neural Networks for Symbolic Music Generation
With recent breakthroughs in artificial neural networks, deep generative models have become one of the leading techniques for computational creativity. Despite very promising progress on image and short sequence generation, symbolic music generation remains a challenging problem since the structure of compositions are usually complicated. In this study, we attempt to solve the melody generation problem constrained by the given chord progression. In particular, we explore the effect of explicit architectural encoding of musical structure via comparing two sequential generative models: LSTM (a type of RNN) and WaveNet (dilated temporal-CNN). As far as we know, this is the first study of applying WaveNet to symbolic music generation, as well as the first systematic comparison between temporal-CNN and RNN for music generation. We conduct a survey for evaluation in our generations and implemented Variable Markov Oracle in music pattern discovery. Experimental results show that to encode structure more explicitly using a stack of dilated convolution layers improved the performance significantly, and a global encoding of underlying chord progression into the generation procedure gains even more.
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