Text-to-Image Generation with GANs: Techniques, Applications, and Basic Python Implementation

Main Article Content

Chulliyev Shokhrukh Ibadullayevich

Abstract

Text-to-image generation in artificial intelligence aims to create realistic visuals from textual descriptions. Techniques like GANs and VAEs translate text into images, finding applications in art, e-commerce, and content creation. Advancements include finegrained generation, user-controlled outputs, and improved realism. Challenges persist in aligning detailed descriptions with accurate visual outputs. Continued progress in deep learning and model enhancements drives the evolution of text-to-image systems. This article explores techniques, applications, challenges, and recent advancements, offering a basic Python implementation using GANs for text-driven image synthesis

Article Details

How to Cite
Chulliyev Shokhrukh Ibadullayevich. (2024). Text-to-Image Generation with GANs: Techniques, Applications, and Basic Python Implementation. Eurasian Research Bulletin, 28, 1–4. Retrieved from https://geniusjournals.org/index.php/erb/article/view/5495
Section
Articles