Thai, P. KamakshiBandaru, Sai JayanthSharma, AbhishekDevala, Akshay
<p>Fashion image generation is a significant challenge at the intersection of artificial intelligence (AI) and creative industries, with applications in design, e-commerce, and virtual try-on systems. Conditional Generative Adversarial Networks (CGANs) extend the capabilities of standard GANs by allowing control over generated content based on specified conditions, such as clothing type, color, or texture. This Study investigates the use of CGANs for generating high-quality, attribute-specific fashion images. The study includes designing a CGAN architecture, training the model on the Deep Fashion dataset, and optimizing performance through rigorous experimentation </p>
P. Kamakshi ThaiSunith BandaruAbhishek SharmaAkshay Devala
Chitvan JamdagniVasu SharmaJatin Goyalh DivyansB. Eswara ReddyPayal Thakur
Ashita ShethKartiki TonpeSanika MemaneSrushti WasnikSheetal KapseRichard ZhangHan ZhangIan GoodfellowAnna JobinIencaMarcelloEffy VayenaR GeigerStuart
Supriya B. RaoShailesh S. ShettyChandra SinghSrinivas P. MAnush Bekal