DeepFake Detection on Publicly Available Datasets using Modified AlexNet,

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

Deep learning has been applied successfully in many areas, including computer vision, natural language processing, cyber physical systems and big data analytics. Recently, a synthesis of deep leaning techniques has been deployed to create fake images and videos that are not easily distinguishable from the real ones; this technology is known as DeepFakes. In this paper, we looked at various DeepFakes related datasets and created a model in order to identify whether a frame of a video is fake or real. This is important as videos can be easily manipulated in a way that can spread misinformation, and that can cause major problems in the world today, especially if the videos have political implications. In order to create a model, we utilize a modified AlexNet constructed of an arrangement of 6 layers: convolution2d, max pooling, dense, flatten, activation and dropout layers. UADFV, FaceForensics++, and Celeb-DF are the 3 datasets used in this research. There are many publicly available datasets, however, we found the UADFV, FaceForensics++ and Celeb-DF to be the most convenient in how the data was formatted. All data for each dataset was organized into videos of varying classes. While the UADFV dataset is straightforward and only has 2 classes: real and fake, the FaceForensics++ dataset looks at the various kinds of video manipulations and has 5 different classes. Our model was able to achieve a 9S.73% accuracy when identifying whether a video is real or fake on the UADFV dataset, a slightly adjusted version was able to accomplish an 87.49% accuracy with the FaceForenisics++dataset, and reached 98.85% accuracy on the Celeb-df dataset.
Original languageEnglish
Title of host publicationUnknown book
StatePublished - 2020

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