A Multi-color Spatio-Temporal Approach For Detecting DeepFake

2022 12th International Conference on Pattern Recognition Systems (ICPRS)(2022)

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摘要
The current surge in hyper-realistic faces created artificially using DeepFakes necessitates media forensics solutions suited to video streams and perform reliably with a low false alarm rate at the video level. The paper proposes a spatial and temporal aware pipeline to detect DeepFake videos automatically. Our method employed a two-stream convolutional neural network to extract local spatial and temporal features independently. These features are then fed to fully connected layers to classify whether a video has been subject to manipulation. The proposed method has been evaluated against FaceForensics++, DFTIMIT, and DFD benchmarks. Our suggested technique demonstrates encouraging performance in this task
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关键词
DeepFake,Autoencoder,GAN,Face-swap,Face-re-enactment
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