Activity Number:
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107
- SPEED: Statistical Methods, Computing, and Applications Part 1
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Type:
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Contributed
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Date/Time:
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Monday, August 8, 2022 : 8:30 AM to 10:20 PM
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Sponsor:
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Section on Statistics in Defense and National Security
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Abstract #320941
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Title:
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A Statistical Framework for Deepfake Detection
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Author(s):
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Shannon Gallagher* and Catherine Bernaciak and Jeffrey Mellon and Dominic Ross
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Companies:
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Software Engineering Institute, Carnegie Mellon University and Software Engineering Institute, Carnegie Mellon University and Software Engineering Institute, Carnegie Mellon University and Software Engineering Institute, Carnegie Mellon University
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Keywords:
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deepfakes;
image processing;
neural nets;
classification
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Abstract:
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Believable media created by deep neural networks, also known as deepfakes, have been increasingly studied in the past five years. Deepfakes are a threat to national security both at the leadership level (e.g. puppeteering a state leader) and also the citizen level (e.g. abusing the image and likeness of a person in explicit media). Data-driven deepfake detection is, then, an important step in neutralizing the threat of deepfakes, especially as billions of images and over half a million hours of video are updated daily. To streamline and standardize the deepfake detection process, we establish a statistical framework using existing deepfake detection methods which account for the computational complexity of algorithms; their accuracy, precision and recall; and the features used as input. We demonstrate the use of our framework on open-source data sets including Stylegan2 images and Deepfake Detection Challenge videos and show a number of intra-dataset results. We describe how our results can be reproduced using best practices and how are framework can be simply transferred to other agencies.
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Authors who are presenting talks have a * after their name.
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