Abstract

Neural Style Transfer (NST) is a class of software algorithms that allows us to transform scenes, change/edit the environment of a media with the help of a Neural Network. NST finds use in image and video editing software allowing image stylization based on a general model, unlike traditional methods. This made NST a trending topic in the entertainment industry as professional editors/media producers create media faster and offer the general public recreational use. In this paper, the current progress in Neural Style Transfer with all related aspects such as still images and videos is presented critically. The authors looked at the different architectures used and compared their advantages and limitations. Multiple literature reviews focus on the Neural Style Transfer of images and cover Generative Adversarial Networks (GANs) that generate video. As per the authors’ knowledge, this is the only research article that looks at image and video style transfer, particularly mobile devices with high potential usage. This article also reviewed the challenges faced in applying for video neural style transfer in real-time on mobile devices and presents research gaps with future research directions. NST, a fascinating deep learning application, has considerable research and application potential in the coming years.

Highlights

  • Since its conception, videos are considered a popular multimedia tool for various functions like Education, entertainment, communication, etc

  • The results show that CycleGANs perform exceptionally well on all test metrics barring the Pix2Pix model

  • The results clearly show that CartoonGAN effectively transforms real-world scenery images into cartoon-style efficiency and high quality

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Summary

Introduction

Videos are considered a popular multimedia tool for various functions like Education, entertainment, communication, etc. Entertainment producers use dedicated hardware and editing tools to create picturesque scenes with the help of Compute Generated Imagery (CGI) software like [2] and [3]. Developments have been observed to use NST for video style transfer (Ruder et al 2017), (Huang et al 2017). This has significant applications like entertainment to directly transform the scene or parts, usually taking hours of manual work and supervision. It can be used for recreational purposes fusing with Augmented Reality to create a virtual world modeled after the real one (Dudzik et al 2020)

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