Video forgeries are detectable via binary classification on multimedia stream descriptors without pixel analysis.
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A hybrid RGB plus compression-feature transfer learning pipeline with Youden-optimized thresholds improves forgery detection on the CASIA v2.0 dataset using off-the-shelf CNN backbones.
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We Need No Pixels: Video Manipulation Detection Using Stream Descriptors
Video forgeries are detectable via binary classification on multimedia stream descriptors without pixel analysis.
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Digital Image Forgery Detection Using Transfer Learning
A hybrid RGB plus compression-feature transfer learning pipeline with Youden-optimized thresholds improves forgery detection on the CASIA v2.0 dataset using off-the-shelf CNN backbones.