Tool for a real-time automatic assessment of vocal proficiency

IF 0.6 0 MUSIC
Eitan Ornoy, Shai Cohen
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引用次数: 1

Abstract

Over the years, a growing number of researchers have been developing models that would automatically generate assessments of music performances. Yet the number and usage of automatic singing evaluation systems is still rather rudimentary, addressing, for the most part, a limited amount of performance features and lacking verification. This study reports on a newly designed automatic singing assessment tool based on a score-based model and its validation. Short music segments (N = 2640) were gathered via recordings made by music education students (N = 55) of a specially inscribed vocal music excerpt. Recorded data evaluation was generated by a specially devised automatic tool as well as by three human experts, addressing pitch intonation (examined for its overall display, single note accuracy and interval manifestation), dynamics transmission and vocal resonation quality. Findings indicated a higher rating given by the experts in regard to pitch intonation and vocal resonation. However, a similitude was found for the dynamics transmission scoring, and a correlation was found for pitch intonation and the dynamics transmission scoring level: in both performance parameters, the higher the experts’ gradings were, the higher the gradings provided by the automatic tool. Results attest to the automatic tools’ qualification as an aid for human judgement of singing proficiency. The tool could assist investigations in various musical domains, such as music pedagogy, music performance or music perception research.
用于实时自动评估声音熟练程度的工具
多年来,越来越多的研究人员一直在开发能够自动生成音乐表演评估的模型。然而,自动歌唱评估系统的数量和使用仍然相当初级,在很大程度上解决了有限的表演特征,并且缺乏验证。本研究报告了一种新设计的基于分数模型的自动歌唱评估工具及其验证。音乐教育学生(N=55)录制了一段特别题词的声乐节选,收集了音乐短片(N=2640)。记录的数据评估由一个专门设计的自动工具和三位人类专家生成,涉及音高语调(检查其整体显示、单音符准确性和音程表现)、动态传输和声音共振质量。研究结果表明,专家们在音调和声音共鸣方面给予了更高的评价。然而,发现动态传输评分相似,音高语调和动态传输评分水平相关:在这两个性能参数中,专家的评分越高,自动工具提供的评分就越高。结果证明了自动工具作为人类判断歌唱水平的辅助工具的资格。该工具可以帮助各种音乐领域的调查,如音乐教育学、音乐表演或音乐感知研究。
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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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
6
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