Computational Models of Expressive Music Performance: A Comprehensive and Critical Review

Carlos Eduardo Cancino-Chacón, M. Grachten, W. Goebl, G. Widmer
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引用次数: 35

Abstract

Expressive performance is an indispensable part of music making. When playing a piece, expert performers shape various parameters (tempo, timing, dynamics, intonation, articulation, etc.) in ways that are not prescribed by the notated score, in this way producing an expressive rendition that brings out dramatic, affective, and emotional qualities that may engage and affect the listeners. Given the central importance of this skill for many kinds of music, expressive performance has become an important research topic for disciplines like musicology, music psychology, etc. This paper focuses on a specific thread of research: work on computational music performance models. Computational models are attempts at codifying hypotheses about expressive performance in terms of mathematical formulas or computer programs, so that they can be evaluated in systematic and quantitative ways. Such models can serve at least two main purposes: they permit us to systematically study certain hypotheses regarding performance; and they can be used as tools to generate automated or semi-automated performances, in artistic or educational contexts. The present article presents an up-to-date overview of the state of the art in this domain. We explore recent trends in the field, such as a strong focus on data-driven (machine learning); a growing interest in interactive expressive systems, such as conductor simulators and automatic accompaniment systems; and an increased interest in exploring cognitively plausible features and models. We provide an in-depth discussion of several important design choices in such computer models, and discuss a crucial (and still largely unsolved) problem that is hindering systematic progress: the question of how to evaluate such models in scientifically and musically meaningful ways. From all this, we finally derive some research directions that should be pursued with priority, in order to advance the field and our understanding of expressive music performance.
表达性音乐表演的计算模型:一个全面和批判性的评论
表现力表演是音乐创作中不可缺少的一部分。在演奏曲目时,专业的演奏者会以乐谱中没有规定的方式塑造各种参数(速度、时间、动态、语调、发音等),从而产生富有表现力的演奏,展现出戏剧性、情感和情感的品质,这些品质可能会吸引和影响听众。鉴于这一技能对许多类型的音乐至关重要,表现性表演已成为音乐学、音乐心理学等学科的重要研究课题。本文关注的是一个特定的研究方向:计算音乐表演模型。计算模型是试图用数学公式或计算机程序编纂关于表达能力的假设,以便以系统和定量的方式对其进行评估。这样的模型至少有两个主要目的:它们允许我们系统地研究有关绩效的某些假设;它们可以被用作工具,在艺术或教育环境中产生自动化或半自动化的表演。本文介绍了这一领域最新的技术概况。我们探讨了该领域的最新趋势,例如对数据驱动(机器学习)的强烈关注;对交互式表达系统的兴趣日益增长,例如指挥模拟器和自动伴奏系统;对探索认知上可信的特征和模型的兴趣越来越大。我们对这些计算机模型中的几个重要的设计选择进行了深入的讨论,并讨论了一个阻碍系统进展的关键问题(很大程度上仍未解决):如何以科学和音乐有意义的方式评估这些模型的问题。在此基础上,我们最终得出了一些应该优先追求的研究方向,以推动这一领域的发展和我们对表现性音乐表演的理解。
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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