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首页> 外文期刊>International Journal of Intelligent Defence Support Systems >Automatic stress detection in emergency (telephone) calls
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Automatic stress detection in emergency (telephone) calls

机译:紧急呼叫(电话)中的自动压力检测

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摘要

The abundance of calls to emergency lines during crises is difficult to handle by the limited number of operators. Detecting if the caller is experiencing some extreme emotions can be a solution for distinguishing the more urgent calls. Apart from these, there are several other applications that can benefit from awareness of the emotional state of the speaker. This paper describes the design of a system for selecting the calls that appear to be urgent, based on emotion detection. The system is trained using a database of spontaneous emotional speech from a call-centre. Four machine learning techniques are applied, based on either prosodic or spectral features, resulting in individual detectors. As a last stage, we investigate the effect of fusing these detectors into a single detection system. We observe an improvement in the equal error rate (EER) from 19.0% on average for four individual detectors to 4.2% when fused using linear logistic regression. All experiments are performed in a speaker independent cross-validation framework.
机译:数量有限的运营商很难处理危机期间紧急电话的大量呼叫。检测呼叫者是否正在经历一些极端的情绪可能是区分更紧急呼叫的一种解决方案。除此之外,还有其他一些应用程序可以从对讲话者情绪状态的了解中受益。本文介绍了一种基于情感检测来选择紧急呼叫的系统的设计。使用来自呼叫中心的自发情感语音数据库来训练该系统。基于韵律或频谱特征,应用了四种机器学习技术,从而形成了单独的检测器。最后一步,我们研究将这些检测器融合到单个检测系统中的效果。我们观察到,使用线性逻辑回归融合时,平均错误率(EER)从四个独立检测器的平均19.0%改善到4.2%。所有实验均在独立于说话人的交叉验证框架中进行。

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