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On-Body Monitoring of Voice-Based Cognitive Load Features in an Auditory Working Memory Task

机译:对听觉工作记忆任务中基于语音的认知负荷特征的人体监测

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The ability to monitor an individual's cognitive load in operational and naturalistic settings is of great importance in improving military performance and readiness. This paper describes preliminary results of using an on-body, multimodal voice monitoring system for assessing cognitive load based on vocal characteristics extracted from noise-robust sensors. The main components of the system include a commercial wired electroglottograph (EGG) and a lightweight, flex circuit that houses two sensors: an acoustic MEMS microphone (MIC) and a non-acoustic neck-surface accelerometer (ACC). We conducted human subject experiments using a cognitive load protocol under quiet laboratory conditions and computed a previously investigated vocal biomarker (creaky voice quality) from the MIC, ACC, and EGG signals. Results demonstrated the potential of discriminating low versus high cognitive load using the creaky voice correlation structure within each of the three sensor domains. Combining MIC, ACC, and EGG hardware into an integrated system would provide complementary information for quantifying voice and speech biomarkers with a high degree of robustness to competing noise sources.
机译:在作战和自然主义环境中监视个人认知负荷的能力对于提高军事绩效和战备状态非常重要。本文介绍了使用人体多模态语音监控系统基于从噪声健壮的传感器提取的声音特征评估认知负荷的初步结果。该系统的主要组件包括商用有线电描记器(EGG)和轻巧的柔性电路,其中装有两个传感器:声学MEMS麦克风(MIC)和非声学颈表面加速度计(ACC)。我们在安静的实验室条件下使用认知负荷协议进行了人类受试者实验,并根据MIC,ACC和EGG信号计算了先前研究的声音生物标记(语音质量差)。结果表明,使用三个传感器域中每个域中的吱吱作响的语音相关结构来区分低认知负载和高认知负载的潜力。将MIC,ACC和EGG硬件组合到一个集成系统中将提供互补信息,以量化语音和语音生物标记,并且具有对竞争性噪声源的高度鲁棒性。

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