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Thinking in Frequency: Face Forgery Detection by Mining Frequency-aware Clues

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arxiv 2007.09355 v2 pith:U2OJUKUI submitted 2020-07-18 cs.CV

Thinking in Frequency: Face Forgery Detection by Mining Frequency-aware Clues

classification cs.CV
keywords forgeryfrequencyfacedetectionfrequency-awarechallengingcluescomplementary
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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As realistic facial manipulation technologies have achieved remarkable progress, social concerns about potential malicious abuse of these technologies bring out an emerging research topic of face forgery detection. However, it is extremely challenging since recent advances are able to forge faces beyond the perception ability of human eyes, especially in compressed images and videos. We find that mining forgery patterns with the awareness of frequency could be a cure, as frequency provides a complementary viewpoint where either subtle forgery artifacts or compression errors could be well described. To introduce frequency into the face forgery detection, we propose a novel Frequency in Face Forgery Network (F3-Net), taking advantages of two different but complementary frequency-aware clues, 1) frequency-aware decomposed image components, and 2) local frequency statistics, to deeply mine the forgery patterns via our two-stream collaborative learning framework. We apply DCT as the applied frequency-domain transformation. Through comprehensive studies, we show that the proposed F3-Net significantly outperforms competing state-of-the-art methods on all compression qualities in the challenging FaceForensics++ dataset, especially wins a big lead upon low-quality media.

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