2022
DOI: 10.14569/ijacsa.2022.0130880
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Deepfakes on Retinal Images using GAN

Abstract: In Deep Learning (DL), Generative Adversarial Networks (GAN) are a popular technique for generating synthetic images, which require extensive and balanced datasets to train. These Artificial Intelligence systems can produce synthetic images that seem authentic, known as Deep Fakes. At present, datadriven approaches to classifying medical images are prevalent. However, most medical data is inaccessible to general researchers due to standard consent forms that restrict research to medical journals or education. … Show more

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Cited by 7 publications
(2 citation statements)
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“…36 Numerous other research papers 37 38 39 40 explore various improvements in NLP tasks and deepfake detection strategies, the development of synthetic medical images and AI-generated audio. These papers collectively demonstrate the breadth of ongoing research, from devising innovative models for task-oriented dialogue systems 41 to exploring the potential of GANs in creating artificial retinal fundus images 42 and generating naturalistic spoken dialogues. 43 In summary, a cursory examination of contemporary research supports the argument that AI-generated deepfakes and advanced language models offer unprecedented capabilities and pose considerable challenges.…”
Section: Surveying the Academic Literaturementioning
confidence: 90%
“…36 Numerous other research papers 37 38 39 40 explore various improvements in NLP tasks and deepfake detection strategies, the development of synthetic medical images and AI-generated audio. These papers collectively demonstrate the breadth of ongoing research, from devising innovative models for task-oriented dialogue systems 41 to exploring the potential of GANs in creating artificial retinal fundus images 42 and generating naturalistic spoken dialogues. 43 In summary, a cursory examination of contemporary research supports the argument that AI-generated deepfakes and advanced language models offer unprecedented capabilities and pose considerable challenges.…”
Section: Surveying the Academic Literaturementioning
confidence: 90%
“…Deep-learning is used in various aspects such as objectdetection, image-captioning [39], image segmentation [40], etc. This study uses machine and deep learning approaches to assess how twitter discussions regarding the Ukraine-Russia war affect public sentiment.…”
Section: Introductionmentioning
confidence: 99%