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基于体适能概念的大学生身体能力评估语音数据库的验证。

Validation of a Speech Database for Assessing College Students' Physical Competence under the Concept of Physical Literacy.

机构信息

Department of Sports Science and Physical Education, Faculty of Education, The Chinese University of Hong Kong, Hong Kong, China.

School of Physical Education, Jinan University, Guangzhou 510632, China.

出版信息

Int J Environ Res Public Health. 2022 Jun 8;19(12):7046. doi: 10.3390/ijerph19127046.

Abstract

This study developed a speech database for assessing one of the elements of physical literacy-physical competence. Thirty-one healthy and native Cantonese speakers were instructed to read a material aloud after various exercises. The speech database contained four types of speech, which were collected at rest and after three exercises of the Canadian Assessment of Physical Literacy 2nd Edition. To show the possibility of detecting each exercise state, a support vector machine (SVM) was trained on the acoustic features. Two speech feature sets, the extended Geneva Minimalistic Acoustic Parameter Set (eGeMAPS) and Computational Paralinguistics Challenge (ComParE), were utilized to perform speech signal processing. The results showed that the two stage four-class SVM were better than the stage one. The performances of both feature sets could achieve 70% accuracy (unweighted average recall (UAR)) in the three-class model after five-fold cross-validation. The UAR result of the resting and vigorous state on the two-class model running with the ComParE feature set was 97%, and the UAR of the resting and moderate state was 74%. This study introduced the process of constructing a speech database and a method that can achieve the short-time automatic classification of physical states. Future work on this corpus, including the prediction of the physical competence of young people, comparison of speech features with other age groups and further spectral analysis, are suggested.

摘要

本研究开发了一个用于评估体质要素之一——身体能力的语音数据库。31 名健康的、以粤语为母语的参与者在完成各种练习后被要求大声朗读一篇材料。该语音数据库包含四种语音,分别在休息时和加拿大体质测评 2 版的三种练习后采集。为了展示检测每种练习状态的可能性,使用支持向量机(SVM)对声学特征进行训练。两个语音特征集,扩展的日内瓦最小声学参数集(eGeMAPS)和计算副语言挑战(ComParE),被用于执行语音信号处理。结果表明,两阶段四分类 SVM 优于单阶段。经过五折交叉验证,两个特征集在三分类模型中的准确率都能达到 70%(未加权平均召回率(UAR))。使用 ComParE 特征集在两分类模型上运行时,休息和剧烈状态的 UAR 结果为 97%,休息和中等状态的 UAR 结果为 74%。本研究介绍了构建语音数据库的过程和一种可以实现身体状态的短期自动分类的方法。未来对该语料库的研究工作,包括对年轻人身体能力的预测、与其他年龄组的语音特征比较以及进一步的频谱分析,都被提出来了。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/50bb/9222620/5d68dbcdeb59/ijerph-19-07046-g001.jpg

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