Domain Adversarial Training on Conditional Variational Auto-Encoder for Controllable Music Generation

Jingwei Zhao, Gus G. Xia, Ye Wang
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引用次数: 2

Abstract

The variational auto-encoder has become a leading framework for symbolic music generation, and a popular research direction is to study how to effectively control the generation process. A straightforward way is to control a model using different conditions during inference. However, in music practice, conditions are usually sequential (rather than simple categorical labels), involving rich information that overlaps with the learned representation. Consequently, the decoder gets confused about whether to"listen to"the latent representation or the condition, and sometimes just ignores the condition. To solve this problem, we leverage domain adversarial training to disentangle the representation from condition cues for better control. Specifically, we propose a condition corruption objective that uses the representation to denoise a corrupted condition. Minimized by a discriminator and maximized by the VAE encoder, this objective adversarially induces a condition-invariant representation. In this paper, we focus on the task of melody harmonization to illustrate our idea, while our methodology can be generalized to other controllable generative tasks. Demos and experiments show that our methodology facilitates not only condition-invariant representation learning but also higher-quality controllability compared to baselines.
面向可控音乐生成的条件变分自编码器领域对抗训练
变分自编码器已成为符号音乐生成的主导框架,研究如何有效控制生成过程是一个热门的研究方向。一种直接的方法是在推理过程中使用不同的条件来控制模型。然而,在音乐实践中,条件通常是顺序的(而不是简单的分类标签),涉及与学习表征重叠的丰富信息。因此,解码器对于是“听”潜在表征还是“听”条件感到困惑,有时甚至忽略了条件。为了解决这个问题,我们利用领域对抗训练将表征从条件线索中分离出来,以便更好地控制。具体来说,我们提出了一个条件损坏目标,它使用该表示对损坏条件进行去噪。该目标由鉴别器最小化,由VAE编码器最大化,对偶诱导出条件不变表示。在本文中,我们以旋律和声任务为重点来说明我们的想法,而我们的方法可以推广到其他可控的生成任务。演示和实验表明,与基线相比,我们的方法不仅有利于条件不变表示学习,而且具有更高质量的可控性。
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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