Generating Coherent Drum Accompaniment With Fills And Improvisations

Rishabh A. Dahale, Vaibhav Talwadker, P. Rao, Prateek Verma
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引用次数: 1

Abstract

Creating a complex work of art like music necessitates profound creativity. With recent advancements in deep learning and powerful models such as transformers, there has been huge progress in automatic music generation. In an accompaniment generation context, creating a coherent drum pattern with apposite fills and improvisations at proper locations in a song is a challenging task even for an experienced drummer. Drum beats tend to follow a repetitive pattern through stanzas with fills or improvisation at section boundaries. In this work, we tackle the task of drum pattern generation conditioned on the accompanying music played by four melodic instruments: Piano, Guitar, Bass, and Strings. We use the transformer sequence to sequence model to generate a basic drum pattern conditioned on the melodic accompaniment to find that improvisation is largely absent, attributed possibly to its expectedly relatively low representation in the training data. We propose a novelty function to capture the extent of improvisation in a bar relative to its neighbors. We train a model to predict improvisation locations from the melodic accompaniment tracks. Finally, we use a novel BERT-inspired in-filling architecture, to learn the structure of both the drums and melody to in-fill elements of improvised music.
产生连贯的鼓伴奏与填充和即兴
创造像音乐这样复杂的艺术作品需要深刻的创造力。随着最近深度学习和强大模型(如变压器)的进步,自动音乐生成已经取得了巨大进展。在伴奏生成的背景下,在歌曲的适当位置用适当的填充和即兴创作创造一个连贯的鼓模式是一项具有挑战性的任务,即使对一个有经验的鼓手来说也是如此。鼓点往往遵循一种重复的模式,通过在小节边界填充或即兴创作的节。在这项工作中,我们解决了由四种旋律乐器:钢琴、吉他、贝斯和弦乐演奏的伴奏音乐产生鼓模式的任务。我们使用变压器序列到序列模型来生成一个以旋律伴奏为条件的基本鼓模式,发现即兴在很大程度上是不存在的,这可能是由于它在训练数据中预期的相对较低的代表性。我们提出了一个新奇的功能来捕捉酒吧相对于其邻居的即兴程度。我们训练一个模型来预测从旋律伴奏轨道即兴位置。最后,我们采用了一种新颖的BERT-inspired in-filling architecture,来学习鼓点和旋律的结构来填充即兴音乐的元素。
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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