A Laptop Ensemble Performance System using Recurrent Neural Networks

R. Proctor, Charles Patrick Martin
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引用次数: 5

Abstract

The popularity of applying machine learning techniques in musical domains has created an inherent availability of freely accessible pre-trained neural network (NN) models ready for use in creative applications. This work outlines the implementation of one such application in the form of an assistance tool designed for live improvisational performances by laptop ensembles. The primary intention was to leverage off-the-shelf pre-trained NN models as a basis for assisting individual performers either as musical novices looking to engage with more experienced performers or as a tool to expand musical possibilities through new forms of creative expression. The system expands upon a variety of ideas found in different research areas including new interfaces for musical expression, generative music and group performance to produce a networked performance solution served via a web-browser interface. The final implementation of the system offers performers a mixture of high and low-level controls to influence the shape of sequences of notes output by locally run NN models in real time, also allowing performers to define their level of engagement with the assisting generative models. Two test performances were played, with the system shown to feasibly support four performers over a four minute piece while producing musically cohesive and engaging music. Iterations on the design of the system exposed technical constraints on the use of a JavaScript environment for generative models in a live music context, largely derived from inescapable processing overheads.
基于递归神经网络的笔记本电脑集成性能系统
在音乐领域应用机器学习技术的普及创造了一个固有的可用性,可以自由访问预训练的神经网络(NN)模型,准备在创造性应用中使用。这项工作概述了以辅助工具的形式为笔记本电脑合奏团的现场即兴表演设计的一个这样的应用程序的实现。主要目的是利用现成的预训练NN模型作为基础,帮助个人表演者作为音乐新手寻求与更有经验的表演者接触,或作为一种工具,通过创造性表达的新形式扩大音乐的可能性。该系统扩展了在不同研究领域发现的各种想法,包括音乐表达,生成音乐和团体表演的新界面,通过web浏览器界面提供网络表演解决方案。该系统的最终实现为表演者提供了高级和低级控制的混合,以实时影响本地运行的神经网络模型输出的音符序列的形状,还允许表演者定义他们与辅助生成模型的参与水平。在进行了两次测试演出后,该系统被证明可以在四分钟的作品中支持四名表演者,同时产生音乐上的凝聚力和吸引力。系统设计的迭代暴露了在现场音乐环境中使用生成模型的JavaScript环境的技术限制,主要来自不可避免的处理开销。
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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