深度模型合奏触摸屏即兴

Charles Patrick Martin, K. Ellefsen, J. Tørresen
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引用次数: 2

摘要

对许多人来说,无论是在唱诗班、爵士组合、管弦乐队还是摇滚乐队中,对音乐表演的追求和享受都与合作创造力密切相关。然而,很少有音乐界面使用计算机的功能来创建或增强合奏音乐体验。这种系统的一种可能性是使用人工神经网络(ANN)来模拟其他音乐家对单个表演者的反应。某些形式的音乐具有众所周知的互动规则;然而,对于使用新的触屏乐器的自由即兴演奏来说,情况并非如此,因为每次新的表演都可能发现互动的风格。本文描述了一个人工神经网络模型的集成交互训练在这样的集成触摸屏即兴的语料库。结果显示了真实的合奏交互,该模型已用于实现一个现场表演系统,其中表演者伴随着三个虚拟玩家的预测和声音触摸手势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Models for Ensemble Touch-Screen Improvisation
For many, the pursuit and enjoyment of musical performance goes hand-in-hand with collaborative creativity, whether in a choir, jazz combo, orchestra, or rock band. However, few musical interfaces use the affordances of computers to create or enhance ensemble musical experiences. One possibility for such a system would be to use an artificial neural network (ANN) to model the way other musicians respond to a single performer. Some forms of music have well-understood rules for interaction; however, this is not the case for free improvisation with new touch-screen instruments where styles of interaction may be discovered in each new performance. This paper describes an ANN model of ensemble interactions trained on a corpus of such ensemble touch-screen improvisations. The results show realistic ensemble interactions and the model has been used to implement a live performance system where a performer is accompanied by the predicted and sonified touch gestures of three virtual players.
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