Neural Style Transfer Using Deep Convolutional Networks: Principles and Applications

Authors

  • G. Rajasekaran Dhaanish Ahmed College of Engineering, Chennai, Tamil Nadu, India
  • B. Saferuden Department of Artificial Intelligence and Data Science, Dhaanish Ahmed College of Engineering, Padappai, Chennai, Tamil Nadu, India
  • Mohamed Zakkariya Maricar Department of Computer Science and Engineering, Dhaanish Ahmed College of Engineering, Padappai, Chennai, Tamil Nadu, India
  • S. Suman Rajest Dhaanish Ahmed College of Engineering, Padappai, Chennai, Tamil Nadu, India

Keywords:

Matplotlib, Sklearn, Random Forest Regressor, Gradient Boosting Regressor, Machine Learning Algorithms, Statistical Models, Probabilistic Model, Supervised Machine Learning, Flight Delay Prediction

Abstract

Neural Style Transfer (NST) has recently emerged as a revolutionary trend at the intersection of profound literacy and cultural expression. This new idea is based on how people naturally create things. It lets you mix material from one image with the style of another, creating a new kind of visually appealing image. This book talks about the ideas, methods, and workings of NST. NST is a new way to make art that combines photographs with rich content and the unique styles of famous painters, illustrators, and others. It does this by routing and manipulating point representations from pre-trained networks. The approach is based on optimising a total loss function that combines content and style losses. This lets images keep both the substance of the content source and the stylistic details of the reference image. This book goes into detail into the specialised parts of NST, showing how convolutional layers in deep neural networks capture the content and style of images. We talk about how to use loss functions and the iterative optimisation process to make beautiful compositions. We also look at how hyperparameters and loss weighting affect the transfer of information and style, which gives us more precise control over it. This work shows the wide range of operations that NST can do, in addition to the specialised ones. NST has made progress in several areas, including graphic design, fine arts, and computer vision. They have done everything from rethinking pictures as if they were painted by expressionist masters to making new textures and designs. This article gives useful examples and real-world use cases that show how NST could be used in the future. NST brings up new ways of talking about culture and gives both artists and technologists valuable tools. It can turn everyday photos into works of art.

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Published

2026-02-08

How to Cite

Neural Style Transfer Using Deep Convolutional Networks: Principles and Applications. (2026). American Journal of Engineering , Mechanics and Architecture (2993-2637), 4(2), 69-81. https://grnjournal.us/index.php/AJEMA/article/view/9078

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