A Systematic Literature Review of Modalities, Trends, and Limitations in Emotion Recognition, Affective Computing, and Sentiment Analysis
-
Published:2024-08-15
Issue:16
Volume:14
Page:7165
-
ISSN:2076-3417
-
Container-title:Applied Sciences
-
language:en
-
Short-container-title:Applied Sciences
Author:
García-Hernández Rosa A.1ORCID, Luna-García Huizilopoztli1ORCID, Celaya-Padilla José M.1ORCID, García-Hernández Alejandra1, Reveles-Gómez Luis C.1ORCID, Flores-Chaires Luis Alberto1, Delgado-Contreras J. Ruben1, Rondon David2, Villalba-Condori Klinge O.3
Affiliation:
1. Laboratorio de Tecnologías Interactivas y Experiencia de Usuario, Universidad Autónoma de Zacatecas, Jardín Juárez 147, Centro, Zacatecas 98000, Mexico 2. Departamento Estudios Generales, Universidad Continental, Arequipa 04001, Peru 3. Vicerrectorado de Investigación, Universidad Católica de Santa María, Arequipa 04001, Peru
Abstract
This systematic literature review delves into the extensive landscape of emotion recognition, sentiment analysis, and affective computing, analyzing 609 articles. Exploring the intricate relationships among these research domains, and leveraging data from four well-established sources—IEEE, Science Direct, Springer, and MDPI—this systematic review classifies studies in four modalities based on the types of data analyzed. These modalities are unimodal, multi-physical, multi-physiological, and multi-physical–physiological. After the classification, key insights about applications, learning models, and data sources are extracted and analyzed. This review highlights the exponential growth in studies utilizing EEG signals for emotion recognition, and the potential of multimodal approaches combining physical and physiological signals to enhance the accuracy and practicality of emotion recognition systems. This comprehensive overview of research advances, emerging trends, and limitations from 2018 to 2023 underscores the importance of continued exploration and interdisciplinary collaboration in these rapidly evolving fields.
Reference67 articles.
1. Zhou, T.H., Liang, W., Liu, H., Wang, L., Ryu, K.H., and Nam, K.W. (2022). EEG Emotion Recognition Applied to the Effect Analysis of Music on Emotion Changes in Psychological Healthcare. Int. J. Environ. Res. Public Health, 20. 2. Speech Emotion Recognition and Text Sentiment Analysis for Financial Distress Prediction;Hajek;Neural Comput. Appl.,2023 3. Automated Analysis and Prediction of Job Interview Performance;Naim;IEEE Trans. Affect. Comput.,2018 4. Emotion Recognition from Multimodal Physiological Signals for Emotion Aware Healthcare Systems;Ayata;J. Med. Biol. Eng.,2020 5. Maithri, M., Raghavendra, U., Gudigar, A., Samanth, J., Barua, D.P., Murugappan, M., Chakole, Y., and Acharya, U.R. (2022). Automated Emotion Recognition: Current Trends and Future Perspectives. Comput. Methods Programs Biomed., 215.
|
|