LGAICLDec 10, 2024

A Review of Human Emotion Synthesis Based on Generative Technology

arXiv:2412.07116v117 citationsh-index: 5IEEE Transactions on Affective Computing
Originality Synthesis-oriented
AI Analysis

This is an incremental contribution that synthesizes existing knowledge for researchers in affective computing and human-computer interaction.

This paper addresses the lack of comprehensive reviews in human emotion synthesis by providing a systematic overview of recent advancements using generative models, covering methodologies, applications across modalities, and future directions.

Human emotion synthesis is a crucial aspect of affective computing. It involves using computational methods to mimic and convey human emotions through various modalities, with the goal of enabling more natural and effective human-computer interactions. Recent advancements in generative models, such as Autoencoders, Generative Adversarial Networks, Diffusion Models, Large Language Models, and Sequence-to-Sequence Models, have significantly contributed to the development of this field. However, there is a notable lack of comprehensive reviews in this field. To address this problem, this paper aims to address this gap by providing a thorough and systematic overview of recent advancements in human emotion synthesis based on generative models. Specifically, this review will first present the review methodology, the emotion models involved, the mathematical principles of generative models, and the datasets used. Then, the review covers the application of different generative models to emotion synthesis based on a variety of modalities, including facial images, speech, and text. It also examines mainstream evaluation metrics. Additionally, the review presents some major findings and suggests future research directions, providing a comprehensive understanding of the role of generative technology in the nuanced domain of emotion synthesis.

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