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Acoustic sleepiness detection: Framework and validation of a speech-adapted pattern recognition approach

机译:声学嗜睡检测:语音自适应模式识别方法的框架和验证

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This article describes a general framework for detecting sleepiness states on the basis of prosody, articulation, and speech-quality-related speech characteristics. The advantages of this automatic real-time approach are that obtaining speech data is nonobstrusive and is free from sensor application and calibration efforts. Different types of acoustic features derived from speech, speaker, and emotion recognition were employed (frame-level-based speech features). Combing these features with high-level contour descriptors, which capture the temporal information of frame-level descriptor contours, results in 45,088 features per speech sample. In general, the measurement process follows the speech-adapted steps of pattern recognition: (1) recording speech, (2) preprocessing, (3) feature computation (using perceptual and signal-processing-related features such as, e.g., fundamental frequency, intensity, pause patterns, formants, and cepstral coefficients), (4) dimensionality reduction, (5) classification, and (6) evaluation. After a correlation-filter-based feature subset selection employed on the feature space in order to find most relevant features, different classification models were trained. The best model-namely, the support-vector machine-achieved 86,1% classification accuracy in predicting sleepiness in a sleep deprivation study (two-class problem, AT = 12; 01.00-08.00 a.m.).
机译:本文介绍了一种基于韵律,清晰度和与语音质量相关的语音特征检测睡意状态的通用框架。这种自动实时方法的优势在于,获取语音数据不会造成干扰,并且无需传感器应用和校准工作。使用了从语音,说话者和情感识别中衍生出的不同类型的声学特征(基于帧级别的语音特征)。将这些特征与高级轮廓描述符相结合,可以捕获帧级描述符轮廓的时间信息,从而每个语音样本得到45,088个特征。通常,测量过程遵循语音识别的模式识别步骤:(1)录制语音,(2)预处理,(3)特征计算(使用与感知和信号处理相关的特征,例如基频,强度,停顿模式,共振峰和倒频谱系数),(4)降维,(5)分类和(6)评估。在特征空间上采用基于相关滤波器的特征子集选择以找到最相关的特征后,训练了不同的分类模型。最好的模型,即支持向量机在睡眠剥夺研究中预测困倦时达到了86.1%的分类精度(两类问题,AT = 12;凌晨01.00-08.00)。

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