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https://insights.sei.cmu.edu/annual-reviews/2022-research-review/a-machine-learning-pipeline-for-deepfake-detection
A Machine Learning Pipeline for Deepfake Detection
Our deepfake detection prototype framework can ingest modes of data and detect at least three types of AI artifacts for each mode with at least 85% accuracy.
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A Machine Learning Pipeline for Deepfake Detection
https://insights.sei.cmu.edu/annual-reviews/2022-research-review/a-machine-learning-pipeline-for-deepfake-detection
Our deepfake detection prototype framework can ingest modes of data and detect at least three types of AI artifacts for each mode with at least 85% accuracy.
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A Machine Learning Pipeline for Deepfake Detection
Our deepfake detection prototype framework can ingest modes of data and detect at least three types of AI artifacts for each mode with at least 85% accuracy.
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