The attention mechanism is primarily responsible for improving Generative Adversarial Networks' (GANs) false picture detection. Synthetic images produced by GANs are very lifelike, which has transformed the picture creation area. That same potential, meanwhile, has also sparked worries about the creation of false or misleading material. The attention mechanism facilitates selective emphasis on particular areas of an image during creation. This mechanism is based on human visual perception. It facilitates the discriminator network in GANs to concentrate more on critical regions, which are often hard for traditional GANs to replicate effectively, such as fine structures, texture details, and object consistency. By including attention processes, GANs can detect minor changes between real and synthetic images, significantly improving their ability to identify synthetic information. In order to improve fake picture recognition, this study explores the crucial role that attention proces