Abstract
Physiological signals are the most reliable form of signals for emotion recognition, as they cannot be controlled deliberately by the subject. Existing review papers on emotion recognition based on physiological signals surveyed only the regular steps involved in the workflow of emotion recognition such as pre-processing, feature extraction, and classification. While these are important steps, such steps are required for any signal processing application. Emotion recognition poses its own set of challenges that are very important to address for a robust system. Thus, to bridge the gap in the existing literature, in this paper, we review the effect of inter-subject data variance on emotion recognition, important data annotation techniques for emotion recognition and their comparison, data pre-processing techniques for each physiological signal, data splitting techniques for improving the generalization of emotion recognition models and different multimodal fusion techniques and their comparison. Finally, we discuss key challenges and future directions in this field.
Reference116 articles.
1. Age and the understanding of emotions: Neuropsychological and sociocognitive perspectives;J. Gerontol. Ser. B Psychol. Sci. Soc. Sci.,2002
2. Screening of Depressive Symptoms in Young–Old Hemodialysis Patients: Relationship between Beck Depression Inventory and 15-Item Geriatric Depression Scale;Nephron Clin. Pract.,2007
3. Patterns of suicide ideation across eight countries in four continents during the COVID-19 pandemic era: Repeated cross-sectional study;JMIR Public Health Surveill.,2022
4. De Nadai, S., D’Incà, M., Parodi, F., Benza, M., Trotta, A., Zero, E., Zero, L., and Sacile, R. (2016, January 12–16). Enhancing safety of transport by road by on-line monitoring of driver emotions. Proceedings of the 2016 11th System of Systems Engineering Conference (SoSE), Kongsberg, Norway.
5. Ertin, E., Stohs, N., Kumar, S., Raij, A., Al’Absi, M., and Shah, S. (2011, January 1–4). AutoSense: Unobtrusively wearable sensor suite for inferring the onset, causality, and consequences of stress in the field. Proceedings of the 9th ACM Conference on Embedded Networked Sensor Systems, Seattle, WA, USA.
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