CORE: Consistent Representation Learning for Face Forgery Detection

2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)(2022)

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摘要
Face manipulation techniques develop rapidly and arouse widespread public concerns. Despite that vanilla convolutional neural networks achieve acceptable performance, they suffer from the overfitting issue. To relieve this issue, there is a trend to introduce some erasing-based augmentations. We find that these methods indeed attempt to implicitly induce more consistent representations for different augmentations via assigning the same label for different augmented images. However, due to the lack of explicit regularization, the consistency between different representations is less satisfactory. Therefore, we constrain the consistency of different representations explicitly and propose a simple yet effective framework, COnsistent REpresentation Learning (CORE). Specifically, we first capture the different representations with different augmentations, then regularize the cosine distance of the representations to enhance the consistency. Extensive experiments (in-dataset and cross-dataset) demonstrate that CORE performs favorably against state-of-the-art face forgery detection methods. Our code is available at https://github.com/niyunsheng/CORE.
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关键词
consistent representation Learning,face forgery detection,face manipulation techniques,widespread public concerns,vanilla convolutional neural networks,overfitting issue,erasing-based augmentations,consistent representations,different augmentations,different augmented images,COnsistent REpresentation Learning,CORE performs,state-of-the-art face
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