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Challenges and Solutions in DeepFakes

2021-09-12 01:22:12
Jatin Sharma, Sahil Sharma

Abstract

Deep learning has been successfully appertained to solve various complex problems in the area of big data analytics to computer vision. A deep learning-powered application recently emerged is Deep Fake. It helps to create fake images and videos that human cannot distinguish them from the real ones and are recent off-shelf manipulation technique that allows swapping two identities in a single video. Technology is a controversial technology with many wide-reaching issues impacting society. So, to counter this emerging problem, we introduce a dataset of 140k real and fake faces which contain 70k real faces from the Flickr dataset collected by Nvidia, as well as 70k fake faces sampled from 1 million fake faces generated by style GAN. We will train our model in the dataset so that our model can identify real or fake faces.

Abstract (translated)

URL

https://arxiv.org/abs/2109.05397

PDF

https://arxiv.org/pdf/2109.05397.pdf


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