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Making pictures from written information is a difficult process. The ability to produce lifelike representations of actual things is demonstrated by Generative Adversarial Networks (GANs). The design of the GAN architecture, hyperparameter tuning, loss function formulation, training strategy selection, dataset selection, and preprocessing are important phases of this research paper which is aimed to produce realistic photos utilizing GANs. In addition to ethical issues, challenges including mode collapse and training instability are addressed in this paper. The proposed model can be applied in a variety of ways, such as data augmentation for computer vision tasks or art production. DCGAN architecture model was trained by diversified labeled data, CIFAR-10/100 for generic pictures, and CelebA for celebrity faces. Fine-tuning is done to achieve the best outcomes while creating images. Anticipated future results include enhanced GAN models, leveraging advancements in architectures like StyleGAN3 or novel approaches for improved image realism. Iterative improvements will drive GANs toward generating even more lifelike and contextually relevant photographs, advancing the field's capabilities and impact.
Gupta et al. (Wed,) studied this question.
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