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Deep Recurrent Music Writer: Memory-enhanced Variational Autoencoder-based Musical Score Composition and an Objective Measure

机译:深度循环音乐作者:基于内存的变分自动编码器乐谱组成和客观测量

摘要

Abstract: In recent years, there has been an increasing interest in music generation using machine learning techniques typically used for classification or regression tasks. This is a field still in its infancy, and most attempts are still characterized by the imposition of many restrictions to the music composition process in order to favor the creation of “interesting” outputs. Furthermore, and most importantly, none of the past attempts has focused on developing objective measures to evaluate the music composed, which would allow to evaluate the pieces composed against a predetermined standard as well as permitting to fine-tune models for better “performance” and music composition goals. In this work, we intend to advance state-of-the-art in this area by introducing and evaluating a new metric for an objective assessment of the quality of the generated pieces. We will use this measure to evaluate the outputs of a truly generative model based on Variational Autoencoders that we apply here to automated music composition. Using our metric, we demonstrate that our model can generate music pieces that follow general stylistic characteristics of a given composer or musical genre. Additionally, we use this measure to investigate the impact of various parameters and model architectures on the compositional process and output.
机译:摘要:近年来,人们对使用机器学习技术(通常用于分类或回归任务)的音乐生成产生了越来越浓厚的兴趣。这是一个尚处于起步阶段的领域,大多数尝试仍以对音乐创作过程施加许多限制为特征,以支持创建“有趣”的输出。此外,最重要的是,过去的尝试都没有集中于开发客观的方法来评估所组成的音乐,这将允许根据预定的标准来评估所组成的乐曲,并允许对模型进行微调以获得更好的“性能”和音乐创作目标。在这项工作中,我们打算通过引入和评估一种新的度量标准来客观地评估所生成的作品的质量,从而在这一领域内提高技术水平。我们将使用此度量来评估基于变分自动编码器的真实生成模型的输出,此处我们将其应用于自动化音乐创作。使用我们的指标,我们证明了我们的模型可以生成遵循给定作曲家或音乐流派的一般风格特征的音乐作品。此外,我们使用这种方法来调查各种参数和模型体系结构对合成过程和输出的影响。

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