Diffusion Dynamics Applied with Novel Methodologies

Authors

  • Anmol Chauhan B.Tech Scholar, Department of Information Technology, Goel Institute of Technology & Management, Lucknow, India
  • Sana Rabbani Assistant Professor, Department of Information Technology, Goel Institute of Technology & Management, Lucknow, India
  • Devendra Agarwal Dean (Academics), Goel Institute of Technology & Management, Lucknow, India
  • Nikhat Akhtar Associate Professor, Department of Information Technology, Goel Institute of Technology & Management, Lucknow, India
  • Yusuf Perwej Professor, Department of Computer Science & Engineering, Goel Institute of Technology & Management, Lucknow, India

Keywords:

Diffusion Model, Image Generation, Machine Learning (ML), Text-to-image, Generative Adversarial Networks (GANs).

Abstract

An in-depth analysis of using stable diffusion models to generate images from text is presented in this research article. Improving generative models' capacity to generate high-quality, contextually appropriate images from textual descriptions is the main focus of this study. By utilizing recent advancements in deep learning, namely in the field of diffusion models, we have created a new system that combines visual and linguistic data to generate aesthetically pleasing and coherent images from given text. To achieve a clear representation that matches the provided textual input, our method employs a stable diffusion process that iteratively reduces a noisy image. This approach differs from conventional generative adversarial networks (GANs) in that it produces more accurate images and has a more consistent training procedure. We use a dual encoder mechanism to successfully record both the structural information needed for picture synthesis and the semantic richness of text. outcomes from extensive trials on benchmark datasets show that our model achieves much better outcomes than current state-of-the-art methods in diversity, text-image alignment, and picture quality. In order to verify the model's efficacy, the article delves into the architectural innovations, training schedule, and assessment criteria used. In addition, we explore other uses for our text-to-image production system, such as for making digital art, content development, and assistive devices for the visually impaired. The research lays the groundwork for future work in this dynamic area by highlighting the technical obstacles faced and the solutions developed. Finally, our text-to-image generation model, which is based on stable diffusion, is a huge step forward for generative models in the field that combines computer vision with natural language processing.

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Published

2024-07-15

How to Cite

[1]
A. Chauhan, S. Rabbani, D. Agarwal, N. Akhtar, and Y. Perwej, “Diffusion Dynamics Applied with Novel Methodologies”, IJIRCST, vol. 12, no. 4, pp. 52–58, Jul. 2024.

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