NECVIVDec 17, 2020

Deep Learning Techniques for Super-Resolution in Video Games

arXiv:2012.09810v119 citations
AI Analysis

This work addresses the problem of increasing computational cost in video game graphics for game developers and consumers, aiming to improve performance and visual quality.

This paper explores the application of deep learning techniques for super-resolution in video games to address the increasing computational cost of graphics. The goal is to enable high-quality graphics while offsetting computational demands, leading to improved performance and enjoyment for consumers.

The computational cost of video game graphics is increasing and hardware for processing graphics is struggling to keep up. This means that computer scientists need to develop creative new ways to improve the performance of graphical processing hardware. Deep learning techniques for video super-resolution can enable video games to have high quality graphics whilst offsetting much of the computational cost. These emerging technologies allow consumers to have improved performance and enjoyment from video games and have the potential to become standard within the game development industry.

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