Bowing modeling for violin students assistance

F. Ortega, Sergio I. Giraldo, R. Ramírez
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引用次数: 1

Abstract

Though musicians tend to agree on the importance of practicing expressivity in performance, not many tools and techniques are available for the task. A machine learning model is proposed for predicting bowing velocity during performances of violin pieces. Our aim is to provide feedback to violin students in a technology--enhanced learning setting. Predictions are generated for musical phrases in a score by matching them to melodically and rhythmically similar phrases in performances by experts and adapting the bow velocity curve measured in the experts' performance. Results show that mean error in velocity predictions and bowing direction classification accuracy outperform our baseline when reference phrases similar to the predicted ones are available.
琴弓造型对小提琴学生的帮助
尽管音乐家们倾向于认同在表演中练习表现力的重要性,但用于这项任务的工具和技术并不多。提出了一种预测小提琴演奏中弓弦速度的机器学习模型。我们的目标是在技术增强的学习环境中为小提琴学生提供反馈。通过将乐谱中的乐句与专家演奏中的旋律和节奏相似的乐句进行匹配,并根据专家演奏中测量的琴弓速度曲线进行预测。结果表明,当有与预测相似的参考短语时,速度预测的平均误差和弯曲方向分类精度都优于我们的基线。
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