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A survey of machine learning techniques in physiology based mental stress detection systems

机译:基于生理学精神胁迫检测系统的机器学习技术调查

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摘要

Various automated/semi-automated medical diagnosis systems based on human physiology have been gaining enormous popularity and importance in recent years. Physiological features exhibit several unique characteristics that contribute to reliability, accuracy and robustness of systems. There has also been significant research focusing on detection of conventional positive and negative emotions after presenting laboratory-based stimuli to participants. This paper presents a comprehensive survey on the following facets of mental stress detection systems: physiological data collection, role of machine learning in Emotion Detection systems and Stress Detection systems, various evaluation measures, challenges and applications. An overview of popular feature selection methods is also presented. An important contribution is the exploration of links between biological features of humans with their emotions and mental stress. The numerous research gaps in this field are highlighted which shall pave path for future research. (C) 2019 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:近年来,基于人类生理学的各种自动化/半自动医疗诊断系统一直在越来越巨大的普及和重要性。生理功能表现出几种独特的特征,有助于系统的可靠性,准确性和鲁棒性。在向参与者展示基于实验室的刺激之后,还具有重要的研究重点是检测常规积极和负面情绪。本文对精神压力检测系统的以下方面进行了全面的调查:生理数据收集,机器学习在情感检测系统和应力检测系统中的作用,各种评估措施,挑战和应用。还介绍了流行的功能选择方法的概述。重要贡献是探索人类与情绪和精神压力的生物学特征之间的联系。这一领域的众多研究差距被突出显示,将为未来的研究铺平道路。 (c)2019年纳雷斯州博士科学学院生物医学研究所。 elsevier b.v出版。保留所有权利。

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