Music Performers have their own idiosyncratic way of interpreting a musical piece. A group of skilled performers playing the same piece of music would likely to inject their unique artistic styles in their performances. The variations of the tempo, timing, dynamics, articulation etc. from the actual notated music are what make the performers unique in their performances. This study presents a dataset consisting of four movements of Schubert's ``Sonata in B-flat major, D.960" performed by nine virtuoso pianists individually. We proposed and extracted a set of expressive features that are able to capture the characteristics of an individual performer's style. We then present a performer identification method based on the similarity of feature distribution, given a set of piano performances. The identification is done considering each feature individually as well as a fusion of the features. Results show that the proposed method achieved a precision of 0.903 using fusion features. Moreover, the onset time deviation feature shows promising result when considered individually.
翻译:音乐表演者有他们自己独特的翻译音乐作品的方式。 一组演奏同一音乐的熟练表演者可能会在表演中注入他们独特的艺术风格。 音节、 时间、 动态、 朗声等与实际加注音乐的变异使得表演者在表演中具有独特性。 本研究提供了一套数据集, 由Shubert的“ Sanata in B-plate major, D.960” 的四种运动组成, 由九位音乐家单独演唱。 我们提出并提取了一组能够捕捉到表演者风格特征的直观特征。 我们随后根据特征分布的相似性, 展示出一种表演者识别方法, 并给一组钢琴表演者提供一套性能。 辨识工作是分别考虑每个特征和特征的融合。 研究结果显示, 提议的方法使用聚合特征实现了0. 903 的精确度。 此外, 开始的时间偏差特征显示, 个别考虑时, 会有很有希望的结果 。