Kshitija T. NalawadeMahesh R. KateMangesh B. NarwadeAkhil A. ShindeShrikant A. Shinde
Generative Adversarial Networks (GANs) are a deep learning based generative model. GANs are a model for training a generative model and it is common to use deep learning models. Generative Adversarial Network(GANs) are a powerful class of neural networks that are used for unsupervised learning. GANs are basically made up of two competing neural network models which compete with each other and are able to analyze, capture and copy the variations within dataset. GANs achieve high level realism by pairing a generator which learns to produce a target output with a discriminator which learns to distinguish true data from the output of the generator. GANs used for Image Synthesis generates high resolution images. Text to face generation is a sub domain of text to image synthesis, and it has a huge impact along with the wide range of applications on public safety domain
Kongtao ZhuXiwei LiuHongxue Yang
Indira Kalyan DuttaBhaskar GhoshAlbert CarlsonMichael W. TotaroMagdy Bayoumi
Umer SaeedUllah, SanaAhmad, JawadShah, Mohammed SShah, Syed AzizAlshehri, YasinGhadi, NikolaosPitropakis, William JBuchananJan, Sana UllahShahAlshehri, Mohammed SYazeed Yasin GhadiPitropakis, NikolaosBuchanan, William J