Volume -14 | Issue -5
Volume -14 | Issue -5
Volume -14 | Issue -5
Volume -14 | Issue -5
Volume -14 | Issue -5
Generative Adversarial Networks are nowadays being used for generating new and lifelike images from datasets of old images. This paper studies the usefulness of a more improved algorithm called Deep Convoluted Generative Adversarial Networks for the generation of hand-drawn images using the case study of cartoon images. A dataset of cartoon images from a cartoon dataset is used for testing the model and the quality of the generated synthetic images are found to be good.