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arxiv 2309.09306 v1 pith:W3F4VZ4Y submitted 2023-09-17 cs.CV cs.CR

Effective Image Tampering Localization via Enhanced Transformer and Co-attention Fusion

classification cs.CV cs.CR
keywords imagefeaturefusionlocalizationtransformerabilityattention-basedeffective
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Powerful manipulation techniques have made digital image forgeries be easily created and widespread without leaving visual anomalies. The blind localization of tampered regions becomes quite significant for image forensics. In this paper, we propose an effective image tampering localization network (EITLNet) based on a two-branch enhanced transformer encoder with attention-based feature fusion. Specifically, a feature enhancement module is designed to enhance the feature representation ability of the transformer encoder. The features extracted from RGB and noise streams are fused effectively by the coordinate attention-based fusion module at multiple scales. Extensive experimental results verify that the proposed scheme achieves the state-of-the-art generalization ability and robustness in various benchmark datasets. Code will be public at https://github.com/multimediaFor/EITLNet.

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