HCAILGNCJun 5, 2023

Synthesizing Affective Neurophysiological Signals Using Generative Models: A Review Paper

arXiv:2306.03112v19 citationsh-index: 88
Originality Synthesis-oriented
AI Analysis

It tackles data scarcity in emotion recognition for human-computer interaction, but it is incremental as a review paper summarizing existing methods.

This review paper addresses the scarcity of public affective datasets for emotion recognition by analyzing the use of generative models to synthesize neurophysiological signals like EEG and fNIRS, aiming to support more efficient and reliable systems.

The integration of emotional intelligence in machines is an important step in advancing human-computer interaction. This demands the development of reliable end-to-end emotion recognition systems. However, the scarcity of public affective datasets presents a challenge. In this literature review, we emphasize the use of generative models to address this issue in neurophysiological signals, particularly Electroencephalogram (EEG) and Functional Near-Infrared Spectroscopy (fNIRS). We provide a comprehensive analysis of different generative models used in the field, examining their input formulation, deployment strategies, and methodologies for evaluating the quality of synthesized data. This review serves as a comprehensive overview, offering insights into the advantages, challenges, and promising future directions in the application of generative models in emotion recognition systems. Through this review, we aim to facilitate the progression of neurophysiological data augmentation, thereby supporting the development of more efficient and reliable emotion recognition systems.

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