Generative Adversarial Networks In Human Emotion Synthesis:a Review
2020 · Noushin Hajarolasvadi, Miguel Arjona Ramírez, Hasan Demirel
Abstract
Synthesizing realistic data samples is of great value for both academic and industrial communities. Deep generative models have become an emerging topic in various research areas like computer vision and signal processing. Affective computing, a topic of a broad interest in computer vision society, has been no exception and has benefited from generative models. In fact, affective computing observed a rapid derivation of generative models during the last two decades. Applications of such models include but are not limited to emotion recognition and classification, unimodal emotion synthesis, and cross-modal emotion synthesis. As a result, we conducted a review of recent advances in human emotion synthesis by studying available databases, advantages, and disadvantages of the generative models along with the related training strategies considering two principal human communication modalities, namely audio and video. In this context, facial expression synthesis, speech emotion synthesis, a
Authors
(none)
Tags
Stats
Related papers
- Modeling Feature Representations For Affective Speech Using Generative Adversarial Networks (2019)0.00
- On Enhancing Speech Emotion Recognition Using Generative Adversarial Networks (2018)12.33
- An Overview Of Affective Speech Synthesis And Conversion In The Deep Learning Era (2022)14.11
- Adversarial Auto-encoders For Speech Based Emotion Recognition (2018)12.68
- Generative Emotional AI For Speech Emotion Recognition: The Case For Synthetic Emotional Speech Augmentation (2023)11.19
- Speech2affectivegestures: Synthesizing Co-speech Gestures With Generative Adversarial Affective Expression Learning (2021)14.35
- Emogene: Audio-driven Emotional 3D Talking-head Generation (2024)2.26
- Learning Representations Of Emotional Speech With Deep Convolutional Generative Adversarial Networks (2017)0.00