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Modeling, analyzing, and synthesizing expressive piano performance with graphical models

机译:使用图形模型对表现力的钢琴演奏进行建模,分析和综合

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摘要

Trained musicians intuitively produce expressive variations that add to their audience's enjoyment. However, there is little quantitative information about the kinds of strategies used in different musical contexts. Since the literal synthesis of notes from a score is bland and unappealing, there is an opportunity for learning systems that can automatically produce compelling expressive variations. The ESP (Expressive Synthetic Performance) system generates expressive renditions using hierarchical hidden Markov models trained on the stylistic variations employed by human performers. Furthermore, the generative models learned by the ESP system provide insight into a number of musicological issues related to expressive performance.
机译:受过训练的音乐家会直观地产生富有表现力的变化,从而增加听众的享受。但是,关于在不同音乐环境中使用的策略类型的定量信息很少。由于从乐谱中音符的字面意思是平淡无奇的,因此学习系统有机会自动产生引人注目的表现形式。 ESP(表达综合演奏)系统使用分层的隐马尔可夫模型生成表达表现形式,该模型是根据人类表演者所采用的风格变化进行训练的。此外,ESP系统学习到的生成模型可以洞悉与表达表现有关的许多音乐问题。

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