FLORIDA: Fake-looking Real Images Dataset
- URL: http://arxiv.org/abs/2311.10931v2
- Date: Sun, 10 Dec 2023 03:36:06 GMT
- Title: FLORIDA: Fake-looking Real Images Dataset
- Authors: Ali Borji
- Abstract summary: We curated a dataset of 510 genuine images that exhibit a fake appearance and conducted an assessment using two AI models.
We show that two models exhibited subpar performance when applied to our dataset.
Our dataset can serve as a valuable tool for assessing the ability of deep learning models to comprehend complex visual stimuli.
- Score: 43.37813040320147
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Although extensive research has been carried out to evaluate the
effectiveness of AI tools and models in detecting deep fakes, the question
remains unanswered regarding whether these models can accurately identify
genuine images that appear artificial. In this study, as an initial step
towards addressing this issue, we have curated a dataset of 510 genuine images
that exhibit a fake appearance and conducted an assessment using two AI models.
We show that two models exhibited subpar performance when applied to our
dataset. Additionally, our dataset can serve as a valuable tool for assessing
the ability of deep learning models to comprehend complex visual stimuli. We
anticipate that this research will stimulate further discussions and
investigations in this area. Our dataset is accessible at
https://github.com/aliborji/FLORIDA.
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