G Rizos, A Baird, M Elliott… - ICASSP 2020-2020 IEEE …, 2020 - ieeexplore.ieee.org
In this paper, we propose an adversarial network implementation for speech emotion conversion as a data augmentation method, validated by a multi-class speech affect …
Existing GAN-based text-to-image models treat images as 2D pixel arrays. In this paper we approach the text-to-image task from a different perspective where a 2D image is …
In creativity support and computational co-creativity contexts, the task of discovering appropriate prompts for use with text-to-image generative models remains difficult. In many …
Affective computing is an interdisciplinary field that studies computational methods that relate to or influence emotion. These methods have been applied to interactive media …
H Kim, H Lee, S Pang, U Oh - 2024 IEEE International …, 2024 - ieeexplore.ieee.org
Recently, text-to-image generative Artificial Intelligence (AI) models have demonstrated their ability to generate high-quality art with text prompts. However, generative AI is still incapable …
AG Ho, K Shim - Archives of Design Research, 2024 - aodr.org
Background Generative art, which includes the development of artworks using algorithms and emergent behaviour, is receiving recognition for its tendency to evoke emotion. A vast …
C Park, IK Lee - Proceedings of the Asian Conference on …, 2020 - openaccess.thecvf.com
We design a deep learning framework that generates landscape images that match an given emotion. We are working on a more challenging approach to generate landscape scenes …
We present HyperCGAN: a conceptually simple and general approach for text-to-image synthesis that uses hypernetworks to condition a GAN model on text. In our setting, the …
Techniques for content generation are provided. A plurality of discriminative terms is determined based at least in part on a first plurality of documents that are related to a first …