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ACOUSTIC SLEEPINESS ANALYSIS-AN ACOUSTICAL PATTERN RECOGNITION APPROACH FOR DETECTING SLEEPINESS FROM RADIO COMMUNICATION

机译:声学睡眠分析 - 一种用于检测无线电通信嗜睡的声学模式识别方法

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A promising approach for the real-time detection of sleepiness of Air Traffic Controller (ATC) and pilots is the acoustic sleepiness analysis. Sleepiness related changes in speech refer to three speech feature classes (a) ,,prosody" (flat intonation, low pitch, unexpected breaks in rhythm, slowed speech rate), (b) ,,articulation" (slurred speech) und ,,voice quality" (softening, lenisation). Method. Within-subject sleep deprivation design; 20.00h to 04.00h; N=23; every hour Standford Sleepiness Scale and speech recordings. Acoustic Analysis. The procedure of acoustic sleepiness analysis includes the following steps: (1) recording of speech corpus (22,1 kHz; 16 bit; mono; spontaneous speech, manual segmentation of the german word "mit" [with], 72 speech samples), (2) extracting speech features set (160 raw and 160 z-normalized features; prosody, articulation and speech quality features (e.g. Jitter, HNR, MFCCs), (3) feature selection and (4) using classification algorithm (MLP, kNN, SVM). Results. The best model (forward selection, 1-NN) offers a mean accuracy rate of 95.0% for males and 94.3% for females for the two-class problem of recognizing sleepy vs. alert speech. Discussion. Critical sleepiness states can be identified semi-automatically with high accuracy out of a single one-syllable word. Our results are limited mainly by the fact that the findings were based on noise-free recordings. Further studies should try to employ real VHF analogue radio communication for the sleepiness prediction of ATCs and pilots.
机译:一种有希望的空中流量控制器(ATC)和飞行员睡眠检测的方法是声学睡眠分析。嗜睡相关的语音变化指的是三个语音特征类(a),,韵律“(扁平语调,低间距,节奏中的意外破裂,慢速语音率),(b),阐明”(搅动的语音)und,声音质量“(软化,Lenisation)。方法。在受试者内睡眠剥夺设计; 20.00h至04.00h; n = 23;每小时配套睡眠尺度和讲话记录。声学分析。声学睡眠分析的程序包括以下步骤: (1)录制语音语料库(22,1 kHz; 16位;单声道;自发的语音,手动分割德语单词“麻省理工学院”[与],72语音样本),(2)提取语音功能集(原始160 160 z标准化特征;韵律,关节和语音质量特征(例如抖动,HNR,MFCC),(3)特征选择和(4)使用分类算法(MLP,KNN,SVM)。结果。最佳模型(正向选择,1-nn)为男性的平均准确率为95.0%,双层专业人士的女性为94.3%令人识别困倦与警报语言的挫折。讨论。临界嗜睡状态可以通过单个单音节字的高精度来确定半自动。我们的结果主要受到调查结果基于无辐射记录的影响。进一步的研究应该尝试采用真正的VHF模拟无线电通信,以便获得ATC和飞行员的嗜睡预测。

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