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Fusing Various Audio Feature Sets for Detection of Parkinson's Disease from Sustained Voice and Speech Recordings

机译:融合各种音频功能集以从持续的语音和语音记录中检测帕金森氏病

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The aim of this study is the analysis of voice and speech recordings for the task of Parkinson's disease detection. Voice modality corresponds to sustained phonation /a/ and speech modality to a short sentence in Lithuanian language. Diverse information from recordings is extracted by 22 well-known audio feature sets. Random forest is used as a learner, both for individual feature sets and for decision-level fusion. Essentia descriptors were found as the best individual feature set, achieving equal error rate of 16.3 % for voice and 13.3 % for speech. Fusion of feature sets and modalities improved detection and achieved equal error rate of 10.8%. Variable importance in fusion revealed speech modality as more important than voice.
机译:这项研究的目的是分析用于帕金森氏病检测任务的语音和语音记录。语音模态对应于持续发声/ a /,语音模态对应于立陶宛语中的短句子。记录中的各种信息是通过22个众所周知的音频功能集提取的。随机森林被用作学习者,既用于单个特征集,又用于决策级融合。发现Essentia描述符是最佳的单个特征集,语音的平均错误率达到16.3%,语音的平均错误率达到13.3%。特征集和模态的融合改善了检测能力,并实现了10.8%的均等错误率。融合中不同的重要性表明语音模态比语音更重要。

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