基于生理信号的情绪检测研究进展

H. Shahzad, Adil Ali Saleem, Amna Ahmed, Kiran Shehzadi, H. Siddiqui
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引用次数: 0

摘要

情绪是身体生化过程的结果,受到各种因素的影响,如精神状态、情况、经历和周围环境。情绪会影响一个人的思考和行动能力。人们相互交流,分享他们的想法和感受。情感在医学领域发挥着至关重要的作用,也可以加强人机交互。根据面部特征、文本、语音和生理信号,可以使用不同的技术来检测情绪。生理信号呼吸中的一个是表示情绪的参数。不同的呼吸习惯与不同的情绪相关的理性信念扩大了呼吸与情绪之间联系的证据。在这篇文章中,回顾了最近关于使用呼吸模式进行情绪识别的不同研究。这项调查的目的是总结最新的技术和技术,帮助研究人员开发情绪检测系统的全球解决方案。各种研究人员使用基准数据集,其中很少有人创建自己的情绪识别数据集。据观察,许多研究人员使用侵入性传感器来获取呼吸信号,这些信号会使受试者感到不舒服和有意识,从而影响结果。参与审查研究的受试者数量相同,年龄和种族相同,这就是为什么这些研究中获得的结果不能应用于不同人群的原因。不存在单一的全球解决方案。
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A Review on Physiological Signal Based Emotion Detection
Emotions are feelings that are the result of biochemical processes in the body that are influenced by a variety of factors such as one's state of mind, situations, experiences, and surrounding environment. Emotions have an impact on one's ability to think and act. People interact with each other to share their thoughts and feelings. Emotions play a vital role in the field of medicine and can also strengthen the human computer interaction. There are different techniques being used to detect emotions based on facial features, texts, speech, and physiological signals. One of the physiological signal breathing is a parameter which represents an emotion. The rational belief that different breathing habits are correlated with different emotions has expanded the evidence for a connection between breathing and emotion. In this manuscript different recent investigations about the emotion recognition using respiration patterns have been reviewed. The aim of the survey is to sum up the latest technologies and techniques to help researchers develop a global solution for emotional detection system. Various researchers use benchmark datasets and few of them created their own dataset for emotion recognition. It is observed that many investigators used invasive sensors to acquire respiration signals that makes subject uncomfortable and conscious that affects the results. The numbers of subjects involved in the studies reviewed are of the same age and race which is the reason why the results obtained in those studies cannot be applied to diverse population. There is no single global solution exist.
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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