寻找音乐中的时间结构:用LSTM循环网络进行蓝调即兴创作

D. Eck, J. Schmidhuber
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引用次数: 245

摘要

我们考虑了从音乐信号中提取基本成分的问题,例如以嵌套周期(或节拍)的形式定义良好的全局时间结构。我们研究是否可以构建一个自适应信号处理设备,通过实例学习如何生成给定音乐风格的新实例。由于循环神经网络(rnn)原则上可以学习信号的时间结构,因此它们是此类任务的良好候选者。不幸的是,由标准rnn组成的音乐往往缺乏全局连贯性。这种失败的原因似乎是rnn无法跟踪表明全球音乐结构的暂时遥远事件。长短期记忆(LSTM)在其他rnn失败的类似领域取得了成功,例如计时和计数以及上下文敏感语言的学习。我们证明LSTM也是学习作曲的一个很好的机制。我们的实验结果表明LSTM成功地学习了一种布鲁斯音乐,并能够以这种风格创作出新颖的(我们认为令人愉悦的)旋律。值得注意的是,一旦网络找到了相关的结构,它就不会偏离它:只要一个人愿意听,LSTM就能以良好的时机和适当的结构演奏蓝调。
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Finding temporal structure in music: blues improvisation with LSTM recurrent networks
We consider the problem of extracting essential ingredients of music signals, such as a well-defined global temporal structure in the form of nested periodicities (or meter). We investigate whether we can construct an adaptive signal processing device that learns by example how to generate new instances of a given musical style. Because recurrent neural networks (RNNs) can, in principle, learn the temporal structure of a signal, they are good candidates for such a task. Unfortunately, music composed by standard RNNs often lacks global coherence. The reason for this failure seems to be that RNNs cannot keep track of temporally distant events that indicate global music structure. Long short-term memory (LSTM) has succeeded in similar domains where other RNNs have failed, such as timing and counting and the learning of context sensitive languages. We show that LSTM is also a good mechanism for learning to compose music. We present experimental results showing that LSTM successfully learns a form of blues music and is able to compose novel (and we believe pleasing) melodies in that style. Remarkably, once the network has found the relevant structure, it does not drift from it: LSTM is able to play the blues with good timing and proper structure as long as one is willing to listen.
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