Impact Factor (2025): 6.9
DOI Prefix: 10.47001/IRJIET
This paper
delves into the intricate realm of generating images through the convergence of
textual descriptions and existing images Employing the prowess of StackGAN
(StackGAN), the endeavor addresses the quintessential challenges in AI-fueled
image synthesis This venture bears profound significance across the landscape
of computer vision, advertising, and entertainment The primary challenges
encompass scarcities in dataset availability, forging meaningful semantic
bridges between text and images, and the art of rendering realism into
generated images Our mission is meticulously honed: fashioning a GAN-centric
model that orchestrates the fusion of text and Images, producing high-quality,
contextually precise visual wonders. Beyond accelerating creative processes and
automating image creation, the project drives a surge of innovation across a
broad range of industries. The methodology orchestrates the meticulous training
of a generator network to conjure images and a discriminator network to discern
authenticity from generated renditions Guided by iterative training and
bolstered by preprocessing techniques, the system acquires the art of
fabricating images imbued with coherent narratives and aesthetic authenticity
This innovation holds the potential to reframe the contours of image creation,
charting a pioneering path within AI-driven image synthesis.
Country : India
IRJIET, Volume 8, Issue 3, March 2024 pp. 212-218