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Text-dependent pathological voice detection

机译:文本依赖病理语音检测

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While global characteristics of the speaker's source and spectral features have been successfully employed in pathological voice detection, the underlying text has largely been ignored. In this work, we focus on experiments that exploit the text stimulus that is read by the subject. Features derived from text include the mean cepstral distortion of the subject from an average intelligible speaker, and prosodic features include the speaking rate, statistics of phoneme durations, etc. The phonetic labeling information is also exploited to ignore all the unvoiced regions of the speech samples to improve the discriminability between intelligible and pathological voices. We also designed features that capture the speaker's overall closeness to intelligible instances of the same text stimulus from other speakers. Our experiments show that the proposed text-derived features improve the detection of pathological voices by 20%.
机译:虽然扬声器源和光谱特征的全局特征已经成功地用于病理语音检测,但基本文本在很大程度上被忽略了。在这项工作中,我们专注于利用主题读取的文本刺激的实验。源自文本的特征包括来自普通可理解的扬声器的对象的平均焦搏器失真,韵律特征包括说话率,音素持续的统计数据等。语音标签信息也被利用来忽略语音样本的所有无人间区域提高可理解和病理声音之间的可怜。我们还设计了捕捉扬声器的整体近距离与其他扬声器相同文本刺激的可理解实例的功能。我们的实验表明,所提出的文本衍生的特征将病理声音的检测提高了20%。

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