Generation of realistic images from human drawn sketches using deep learning
Date
2022-01Publisher
Brac UniversityAuthor
Mahbub, Mohammed Julfikar AliRahmatullah, S. Afsan
Rahman, G M Sohanur
Zillanee, Abu Hasnayen
Akib, Aknur Kamal
Metadata
Show full item recordAbstract
Processing sketches to produce realistic images is an intriguing idea in the world
of emerging Artificial Intelligence. We present a Generative Adversarial Network
(GAN) based methodology that creates satisfactory images for the most prevalent
categories in our approach. The proposed approach is applicable not just to people,
but also to animals, objects and foods. The system takes a sketch and analyzes it
using a powerful neural engine to produce new photographs that resemble realistic
images. We also used a data augmentation method to dramatically increase the
variety of data available for training models. The proposed model has achieved
approximately 96.36% accuracy over generating sketch to realistic images of people
and 40.63% accuracy for objects and animals. Moreover, about 76.63% accuracy on
generating sketches from strokes on an average from people class.