基于卷积- lstm的音乐生成

Yongjie Huang, Xiaofeng Huang, Qiakai Cai
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引用次数: 12

摘要

在本文中,我们提出了一个结合卷积神经网络(CNN)和长短期记忆(LSTM)的音乐生成模型。首先将midi格式的音乐文件转换成乐谱矩阵,然后建立卷积层提取乐谱矩阵的特征。最后,将卷积层的输出沿时间轴方向进行分割,输入到LSTM中,从而达到音乐生成的目的。通过准确度、时域分析、频域分析和人听觉评价的比较,验证了模型的正确性。结果表明,与LSTM相比,卷积-LSTM在音乐生成方面表现更好,具有更明显的波动和更清晰的旋律。
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Music Generation Based on Convolution-LSTM
In this paper, we propose a model that combines Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) for music generation. We first convert MIDI-format music file into a musical score matrix, and then establish convolution layers to extract feature of the musical score matrix. Finally, the output of the convolution layers is split in the direction of the time axis and input into the LSTM, so as to achieve the purpose of music generation. The result of the model was verified by comparison of accuracy, time-domain analysis, frequency-domain analysis and human-auditory evaluation. The results show that Convolution-LSTM performs better in music genertaion than LSTM, with more pronounced undulations and clearer melody.
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