Andres Eduardo Coca Salazar, R. Romero, Liang Zhao
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引用次数: 21
摘要
在这项工作中,Elman递归神经网络用于基于先前在训练阶段学习的音乐风格的自动音乐结构作曲。此外,混沌旋律的一小段被添加到神经网络的输入层作为灵感源,以获得更大的旋律可变性。神经网络采用BPTT (back propagation through time)算法进行训练。本文还提出了一些旋律度量,用于表征神经网络提供的旋律,以及分析插入混沌灵感对原始旋律特征的影响。具体而言,通过使用不同数量的灵感音符,考虑相似性旋律度量来对比学习旋律与每个合成旋律之间的变异性。
Generation of composed musical structures through recurrent neural networks based on chaotic inspiration
In this work, an Elman recurrent neural network is used for automatic musical structure composition based on the style of a music previously learned during the training phase. Furthermore, a small fragment of a chaotic melody is added to the input layer of the neural network as an inspiration source to attain a greater variability of melodies. The neural network is trained by using the BPTT (back propagation through time) algorithm. Some melody measures are also presented for characterizing the melodies provided by the neural network and for analyzing the effect obtained by the insertion of chaotic inspiration in relation to the original melody characteristics. Specifically, a similarity melodic measure is considered for contrasting the variability obtained between the learned melody and each one of the composite melodies by using different quantities of inspiration musical notes.