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Research Article

A Critical Review of Text to Image Synthesis Using GAN Unveiling the Power of GANs

Onkar D. Ghadigaonkar1 Neelam Jain2
1M.sc Computer Science, SVKM’s Mithibai College, University of Mumbai, Maharashtra, India. 2Department of Computer Science, SVKM’S Mithibai College, University of Mumbai, Maharashtra, India.

Published Online: January-April 2024

Pages: 41-50

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Abstract

ext image synthesis is central to graphic synthesis. In previous studies, text-image integration whose primary goal was to find matching words and images through sentence or keyword retrieval has improved over image integration as it holds promise due to advances in deep learning, especially deep genetic models in image fusion. use of an important generational model is generative adversarial network, it has been successfully used in computer vision, NLP, and other fields. In this research, we explore recent research on Generative Adversarial Networks-based text-to-image synthesis and to sum it up, its development. Traditional and advanced models are also summarized. Let's present the explanation. The Generative Adversarial Networks based text-to-image synthesis input details the specific structure of each class, including visual structure and dialog language, in addition to the detailed text description used in previous experiments. The most common application of text to image synthesis is all text-based images, which fall into three categories based on advances in text information processing, network topology, and output control conditions.

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