Implementation of diffusion model in realistic face generation
Date
2024-01Publisher
Brac UniversityAuthor
Rahman, AbidurAl-Mamoon, Faiyaz
Saquib, Mohammad Nazmus
Bahar, Farhan Bin
Fabia, Mukarrama Tun
Metadata
Show full item recordAbstract
Realistic Face Generation has emerged as a compelling area of research in the field
of Artificial Intelligence and it has gained massive attention through the people as it
has significant usage in many sectors. Its application ranges from Facial Recognition
Systems to Deepfake Detection. Our research focuses on adapting and fine-tuning
the Diffusion Model specifically to the domain of Face Generation. We propose a
Novel architecture that combines the Diffusion process with a Latent Space Model,
enabling precise control over the generated faces’ attributes such as age, gender,
facial features etc. Furthermore, we are using a dataset having diverse facial images
to train and evaluate the performance of our model. The work that has been
done in this paper includes, using Diffusion Models in areas related to Realistic Face
Generation with a goal of improving current infrastructures, as well as establishing
new ones. Our research not only explores the theoretical underpinnings of Diffusion
Models, but also extends its inquiry into their practical applications, encompassing
mathematical computations, formulas, principles, and cutting-edge execution techniques
tailored to the domain of Realistic Face Generation. This research looks into
numerous sectors where the applications of this Realistic Face Generation technique
can make the overall process more efficient. First of all, our work starts by analyzing
the existing scholarly articles and papers on various types of Diffusion Models,
their usage, and contribution to the world of Computer Science. We are examining
some Diffusion Models with such details that inaugurates our theoretical base of
the research. Furthermore, as we are trying to implement these models to generate
faces and recognize faces, we are also addressing the influence of various parameters
such as noise level, time constraints, quality of the images and many more. Moreover,
we are taking the testing and learning phases into Deep Monitoring so that
this nobel work should overcome the practical challenges related with the usage of
Diffusion Models for Realistic Face Generation without breaking any ethical code
or breaching data privacy. Additionally, we plan to use Deep Learning concepts for
further face detection and recognition and find more use cases. In conclusion, our
research advances the field of Face Generation by introducing and implementing the
Diffusion Model as a powerful framework for generating highly realistic and diverse
human faces and the results of our experiments highlights the models potential for
applications in this area.