Emotion Recognition among Couples: A Survey

George Boateng, Elgar Fleisch, Tobias Kowatsch
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Abstract

Couples' relationships affect the physical health and emotional well-being of partners. Automatically recognizing each partner's emotions could give a better understanding of their individual emotional well-being, enable interventions and provide clinical benefits. In the paper, we summarize and synthesize works that have focused on developing and evaluating systems to automatically recognize the emotions of each partner based on couples' interaction or conversation contexts. We identified 28 articles from IEEE, ACM, Web of Science, and Google Scholar that were published between 2010 and 2021. We detail the datasets, features, algorithms, evaluation, and results of each work as well as present main themes. We also discuss current challenges, research gaps and propose future research directions. In summary, most works have used audio data collected from the lab with annotations done by external experts and used supervised machine learning approaches for binary classification of positive and negative affect. Performance results leave room for improvement with significant research gaps such as no recognition using data from daily life. This survey will enable new researchers to get an overview of this field and eventually enable the development of emotion recognition systems to inform interventions to improve the emotional well-being of couples.
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夫妻之间的情绪识别:一项调查
夫妻关系会影响伴侣的身体健康和情感健康。自动识别每个伴侣的情绪可以更好地了解他们的个人情绪健康,使干预成为可能,并提供临床益处。在本文中,我们总结和综合了那些专注于开发和评估系统的工作,这些系统可以根据夫妻的互动或对话环境自动识别每个伴侣的情绪。我们从IEEE、ACM、Web ofScience和Google Scholar中选取了2010年至2021年间发表的28篇文章。我们详细介绍了每个工作的数据集、特征、算法、评估和结果,并提出了主要主题。我们还讨论了当前的挑战、研究差距和未来的研究方向。综上所述,大多数工作都使用了从实验室收集的音频数据,并由外部专家进行注释,并使用监督机器学习方法对积极和消极影响进行二元分类。性能结果为改进留下了很大的研究空白,例如没有使用日常生活数据进行识别。这项调查将使新的研究人员对这一领域有一个概述,并最终使情感识别系统的发展能够为改善夫妻情感健康提供信息。
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