Generation of Synthetic Datasets using Generative
Adversarial Networks and Securing it using Blockchain
Journal:
GRENZE International Journal of Engineering and Technology
Authors:
Vrushali Bongirwar, Arpit Agutale, Bipul Biswas, Rehan Khan, Atharva Bhoyar
Volume:
10
Issue:
2
Grenze ID:
01.GIJET.10.2.508_1
Pages:
520-525
Abstract
Emerging from the challenges of generating secure synthetic image datasets, this
research is motivated by the aim to elevate dataset quality while upholding data security.
Synthetic datasets play a crucial role in training machine learning models, but their quality and
diversity are often limited. Simultaneously, the security and authenticity of these datasets
become paramount in an era of increasing data breaches and fraudulent activities. This study
offers a comprehensive solution to two important challenges using advanced technologies.
Firstly, we focus on creating diverse synthetic images that help improve the training of artificial
intelligence models. Secondly, we ensure the safety of these images through a technology called
blockchain. By combining these two technologies, we generate images and make sure they can't
be tampered with. We use a method called Generative Adversarial Networks for generating
images and then store them securely on a blockchain. Our project approach shows that this
approach works well in producing images and keeping them safe. This research contributes to
the field of AI by addressing the issues of dataset quality and security.