首页> 外文会议>Hybrid Intelligent Systems, 2009. HIS '09 >A Machine Learning Approach for Analyzing Musical Expressions of Piano Performance
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A Machine Learning Approach for Analyzing Musical Expressions of Piano Performance

机译:一种分析钢琴演奏音乐表现的机器学习方法

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This paper proposed a machine learning approach for analyzing teachers’ expert knowledge of classifying students’ piano performance into approximate expression categories. Students are usually confused when learning the expressive performance because of teachers’ subjective intention difference on the same performance. In this paper, teacher models will be built by analyzing teachers’ classification rules. By replaying their performances and read teachers’ suggestions in graphical and textual modes which are generated automatically by teacher model, students could understand the nuance of performance features on each expression. Three teachers and ten students joined this experiment. Sixty piano performances were recorded for constructing the teacher models. The average accuracy of teacher models for classifying performance expression is 70.8%. Questionnaires reflect both teachers and students are satisfied with the user interface, generated suggestions, and classification rules.
机译:本文提出了一种机器学习方法,用于分析教师将学生的钢琴演奏分为近似表达类别的专业知识。在学习表达表现时,学生通常会感到困惑,因为教师在同一表现上的主观意向有所不同。本文将通过分析教师的分类规则来建立教师模型。通过重演他们的表演并以教师模型自动生成的图形和文本模式阅读老师的建议,学生可以了解每个表情上表演功能的细微差别。三名老师和十名学生参加了该实验。录制了60场钢琴演奏,以构建教师模型。教师模型对表现表达进行分类的平均准确度为70.8%。问卷调查表反映了教师和学生对用户界面,生成的建议和分类规则的满意度。

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