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Pop Music Generation: From Melody to Multi-style Arrangement

机译:流行音乐一代:从旋律到多风格的安排

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摘要

Music plays an important role in our daily life. With the development of deep learning and modern generation techniques, researchers have done plenty of works on automatic music generation. However, due to the special requirements of both melody and arrangement, most of these methods have limitations when applying to multi-track music generation. Some critical factors related to the quality of music are not well addressed, such as chord progression, rhythm pattern, and musical style. In order to tackle the problems and ensure the harmony of multi-track music, in this article, we propose an end-to-end melody and arrangement generation framework to generate a melody track with several accompany tracks played by some different instruments. To be specific, we first develop a novel Chord based Rhythm and Melody Cross-Generation Model to generate melody with a chord progression. Then, we propose a Multi-Instrument Co-Arrangement Model based on multi-task learning for multi-track music arrangement. Furthermore, to control the musical style of arrangement, we design a Multi-Style Multi-Instrument Co-Arrangement Model to learn the musical style with adversarial training. Therefore, we can not only maintain the harmony of the generated music but also control the musical style for better utilization. Extensive experiments on a real-world dataset demonstrate the superiority and effectiveness of our proposed models.
机译:音乐在日常生活中发挥着重要作用。随着深度学习和现代代发电技术的发展,研究人员在自动音乐生成方面做了很多作品。但是,由于旋律和布置的特殊要求,大多数这些方法在申请多轨音乐生成时都有局限性。与音乐质量相关的一些关键因素并不好好解决,如和弦进展,节奏模式和音乐风格。为了解决问题并确保多轨音乐的和谐,在本文中,我们提出了一个端到端的旋律和布置生成框架,以产生旋律轨道,其中一些不同仪器播放的几个伴随轨道。具体而言,我们首先制定基于新的弦乐和旋律型型模型,以产生与弦进展的旋律。然后,我们提出了一种基于多轨音乐布置的多任务学习的多仪器共安排模型。此外,为了控制布置的音乐风格,我们设计了一种多型多仪器共安模型,以学习具有对抗培训的音乐风格。因此,我们不仅可以保持生成的音乐的和谐,还可以控制音乐风格以获得更好的利用。对现实世界数据集的广泛实验展示了我们所提出的模型的优越性和有效性。

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