Enhancing Image Authenticity Detection: Swin Transformers and Color Frame Analysis for CGI vs. Real Images
The rapid advancements in computer graphics have greatly enhanced the quality of computer-generated images (CGI), making them increasingly indistinguishable from authentic images captured by digital cameras (ADI). This indistinguishability poses significant challenges, especially in an era of widesp...
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Zusammenfassung: | The rapid advancements in computer graphics have greatly enhanced the quality
of computer-generated images (CGI), making them increasingly indistinguishable
from authentic images captured by digital cameras (ADI). This
indistinguishability poses significant challenges, especially in an era of
widespread misinformation and digitally fabricated content. This research
proposes a novel approach to classify CGI and ADI using Swin Transformers and
preprocessing techniques involving RGB and CbCrY color frame analysis. By
harnessing the capabilities of Swin Transformers, our method foregoes
handcrafted features instead of relying on raw pixel data for model training.
This approach achieves state-of-the-art accuracy while offering substantial
improvements in processing speed and robustness against joint image
manipulations such as noise addition, blurring, and JPEG compression. Our
findings highlight the potential of Swin Transformers combined with advanced
color frame analysis for effective and efficient image authenticity detection. |
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DOI: | 10.48550/arxiv.2409.04742 |