2023
DOI: 10.20944/preprints202302.0299.v1
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Using Ensemble Convolutional Neural Network to Detect Deepfakes Using Periocular Data

Abstract: Deepfakes are manipulated or altered images, or video, that are created using deep learning models with high levels of photorealism. The two popular methods of producing a deepfake are based on either convolutional neural networks (CNN), or autoencoders. Deepfakes created using CNN comparatively show higher qualities of realism, yet oftentimes leave artifacts and distortions in the generated media that can be detected using machine learning and deep learning algorithms. In recent years, there has been an influ… Show more

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