Prediction of Music Generation on Time Series Using Bi-LSTM Model

Kwang jin Kim, Chi-Yong Lee
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Abstract

Deep learning is used as a creative tool that could overcome the limitations of existing analysis models and generate various types of results such as text, image, and music. In this paper, we propose a method necessary to preprocess audio data using the Niko's MIDI Pack sound source file as a data set and to generate music using Bi-LSTM. Based on the generated root note, the hidden layers are composed of multi-layers to create a new note suitable for the musical composition, and an attention mechanism is applied to the output gate of the decoder to apply the weight of the factors that affect the data input from the encoder. Setting variables such as loss function and optimization method are applied as parameters for improving the LSTM model. The proposed model is a multi-channel Bi-LSTM with attention that applies notes pitch generated from separating treble clef and bass clef, length of notes, rests, length of rests, and chords to improve the efficiency and prediction of MIDI deep learning process. The results of the learning generate a sound that matches the development of music scale distinct from noise, and we are aiming to contribute to generating a harmonistic stable music.
基于Bi-LSTM模型的时间序列音乐生成预测
深度学习是一种创造性的工具,可以克服现有分析模型的局限性,生成文本、图像、音乐等各种类型的结果。在本文中,我们提出了一种必要的方法来预处理音频数据,使用Niko的MIDI Pack声源文件作为数据集,并使用Bi-LSTM生成音乐。在生成的根音的基础上,将隐藏层进行多层组合,生成适合乐曲的新音,并在解码器的输出门上应用注意机制,对影响编码器输入数据的因素施加权重。采用损失函数等设置变量和优化方法作为参数对LSTM模型进行改进。提出的模型是一种多声道Bi-LSTM,该模型采用了由分离高音谱号和低音谱号产生的音符音高、音符长度、休止符长度和和弦来提高MIDI深度学习过程的效率和预测能力。学习的结果产生了与噪音不同的符合音乐音阶发展的声音,我们的目标是为产生和谐稳定的音乐做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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