Abstract
AbstractEmotion is an interdisciplinary research field investigated by many research areas such as psychology, philosophy, computing, and others. Emotions influence how we make decisions, plan, reason, and deal with various aspects. Automated human emotion recognition (AHER) is a critical research topic in Computer Science. It can be applied in many applications such as marketing, human–robot interaction, electronic games, E-learning, and many more. It is essential for any application requiring to know the emotional state of the person and act accordingly. The automated methods for recognizing emotions use many modalities such as facial expressions, written text, speech, and various biosignals such as the electroencephalograph, blood volume pulse, electrocardiogram, and others to recognize emotions. The signals can be used individually(uni-modal) or as a combination of more than one modality (multi-modal). Most of the work presented is in laboratory experiments and personalized models. Recent research is concerned about in the wild experiments and creating generic models. This study presents a comprehensive review and an evaluation of the state-of-the-art methods for AHER employing machine learning from a computer science perspective and directions for future research work.
Publisher
Springer Science and Business Media LLC
Reference184 articles.
1. Abdou MA (2022) Literature review: efficient deep neural networks techniques for medical image analysis. Neural Comput Appl 34(8):5791–5812
2. Acheampong FA, Wenyu C, Nunoo-Mensah H (2020) Text-based emotion detection: advances, challenges, and opportunities. Eng Rep 2(7):e12189
3. Adibuzzaman M, Jain N, Steinhafel N, Haque M, Ahmed F, Ahamed S, Love R (2013) In situ affect detection in mobile devices: a multimodal approach for advertisement using social network. ACM SIGAPP Appl Comput Rev 13(4):67–77
4. Ali M, Mosa AH, Machot FA, Kyamakya K (2018) Emotion recognition involving physiological and speech signals: a comprehensive review. In: Recent advances in nonlinear dynamics and synchronization, pp 287–302
5. Alnuaim AA, Zakariah M, Alhadlaq A, Shashidhar C, Hatamleh WA, Tarazi H, Shukla PK, Ratna R (2022) Human-computer interaction with detection of speaker emotions using convolution neural networks. Comput Intell Neurosci 2022:746309
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献