Generating music with sentiment using Transformer-GANs

Pedro Neves, José Fornari, J. Florindo
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引用次数: 8

Abstract

The field of Automatic Music Generation has seen significant progress thanks to the advent of Deep Learning. However, most of these results have been produced by unconditional models, which lack the ability to interact with their users, not allowing them to guide the generative process in meaningful and practical ways. Moreover, synthesizing music that remains coherent across longer timescales while still capturing the local aspects that make it sound ``realistic'' or ``human-like'' is still challenging. This is due to the large computational requirements needed to work with long sequences of data, and also to limitations imposed by the training schemes that are often employed. In this paper, we propose a generative model of symbolic music conditioned by data retrieved from human sentiment. The model is a Transformer-GAN trained with labels that correspond to different configurations of the valence and arousal dimensions that quantitatively represent human affective states. We try to tackle both of the problems above by employing an efficient linear version of Attention and using a Discriminator both as a tool to improve the overall quality of the generated music and its ability to follow the conditioning signals.
使用变形金刚生成带有情感的音乐
由于深度学习的出现,自动音乐生成领域取得了重大进展。然而,这些结果大多是由无条件模型产生的,这些模型缺乏与用户交互的能力,不允许他们以有意义和实用的方式指导生成过程。此外,合成在更长的时间尺度上保持连贯的音乐,同时仍然捕捉到使其听起来“真实”或“像人类”的局部方面,仍然是一项挑战。这是由于处理长数据序列需要大量的计算需求,也是由于经常采用的训练方案所施加的限制。在本文中,我们提出了一个符号音乐的生成模型,该模型以从人类情感中检索的数据为条件。该模型是一个Transformer-GAN,其标签对应于定量代表人类情感状态的价态和唤醒维度的不同配置。为了解决上述两个问题,我们采用了一种有效的线性注意力版本,并使用了鉴别器作为工具来提高生成音乐的整体质量及其遵循条件反射信号的能力。
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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