High-Resolution Image Generation Using StyleGAN3
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High-Resolution Image Generation Using StyleGAN3
Authors:
Kumbam Sathwik Reddy Bachelor of Engineering Chandigarh University Mohali, Punjab
Singari Jashwanth Bachelor of Engineering Chandigarh University Mohali, Punjab
Megha Bachelor of Engineering Chandigarh University
Mohali, Punjab megha.e17643@cumail.in
Amit Kumar Sharma Bachelor of Engineering Chandigarh University Mohali, Punjab techamit2312003@gmail.com
Pakalapati Nithin Bachelor of Engineering Chandigarh University Mohali, Punjab
Shubham Nautiyal Bachelor of Engineering Chandigarh University Mohali, Punjab
Abstract— The rapid advancements in generative adversarial networks (GANs) have significantly improved high- resolution image synthesis, with StyleGAN3 emerging as a state- of-the-art model for producing realistic and controllable images. This study explores the capabilities, limitations, and comparative performance of various image generation models, focusing on StyleGAN3's architecture, training strategies, and computational complexity. Through an in-depth survey of existing models, we analyze their effectiveness in terms of quality, realism, and applicability across diverse domains such as facial synthesis, remote sensing, and artistic rendering. Additionally, we identify key limitations, including high computational costs, training instability, and the need for extensive datasets. Comparative analysis highlights the trade- offs between accuracy, computational efficiency, and adaptability in different models. The study also presents critical research gaps and future directions, emphasizing the need for optimizing StyleGAN3 for real-time applications, improving data efficiency, and addressing ethical concerns related to synthetic media. Experimental results, including performance comparisons, computational complexity evaluations, and accuracy assessments, provide a comprehensive understanding of the field. The findings contribute to the ongoing development of generative models and their potential applications in various industries.
Keywords— StyleGAN3, Image Synthesis, Generative Adversarial Networks, High-Resolution Image Generation.
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