ISSN 2079-3537      

 
 
 
                                                                                                                                                                                                                                                                                                                                                                                                                                                                             

Scientific Visualization, 2024, volume 16, number 5, pages 109 - 119, DOI: 10.26583/sv.16.5.08

The Impact of Input Data Density on the Performance of Graphic Neural Networks

Author: N.A. Bondareva1,A

Keldysh Institute of Applied Mathematics RAS

1 ORCID: 0000-0002-7586-903X, nicibond9991@gmail.com

 

Abstract

The paper provides a brief overview of generative neural networks and considers the role of information in training generative neural networks. In the digital environment, each object is surrounded by a vast information field, including unordered information and a set of references to it. The density of the object's information field determines the ability of technologies such as artificial intelligence to recreate its image based on the collected data. The more data is available, the more accurately and completely the digital image can be recreated. The paper considers a number of problems arising from the use of text-to-image networks and possible methods for solving them. The article considers various aspects of the role of personal data and possible ethical and social consequences in the era of generative technologies, as well as the prospects and risks of further development of generative neural networks in specialized areas such as medicine and manufacturing. The rapid development of neural network technologies can have a significant impact on education and social phenomena.

 

Keywords: Machine learning, computer vision and pattern recognition, neural network, computer graphics, information field density, Text-to-image.