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LSTM based Music Generation with Dataset Preprocessing and Reconstruction Techniques

机译:基于LSTM的音乐生成,具有数据集预处理和重建技​​术

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Numerous approaches have been used by researchers for the purpose of music generation. Recurrent neural networks (RNNs) and Long short term memory (LSTM) networks are able to effectively model sequential data. LSTM networks have been extensively used to produce sheet music, character by character. These LSTM models, however, require a lot of time to train to be able to produce pleasant and syntactically correct sheet music. We introduce some effective dataset preprocessing and reconstruction techniques which facilitate the generation of syntactically correct sheet music, while reducing the training time. The quality of music generated is qualitatively measured by peers. The proposed model employing the dataset preprocessing and reconstruction techniques is compared with another model possessing no such techniques in a subjective manner.
机译:研究人员使用了许多方法,用于音乐生成的目的。经常性神经网络(RNN)和长短期内存(LSTM)网络能够有效地模拟顺序数据。 LSTM网络已被广泛用于生产乐谱,字符以字符为字符。然而,这些LSTM模型需要大量的时间来训练能够产生令人愉悦和句法的较正乐谱。我们介绍了一些有效的DataSet预处理和重建技​​术,这促进了语法正确的乐谱,同时减少了培训时间。生成的音乐质量通过对等体进行定性测量。将采用数据集预处理和重建技​​术的所提出的模型与以主观方式没有具有这种技术的另一模型进行比较。

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