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Effective Image Tampering Localization with Multi-Scale ConvNeXt Feature Fusion

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arxiv 2208.13739 v5 pith:CLIE54NU submitted 2022-08-29 cs.CV

Effective Image Tampering Localization with Multi-Scale ConvNeXt Feature Fusion

classification cs.CV
keywords imageconvnexteffectivelocalizationmulti-scaleperformancetamperingfeature
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With the widespread use of powerful image editing tools, image tampering becomes easy and realistic. Existing image forensic methods still face challenges of low generalization performance and robustness. In this letter, we propose an effective image tampering localization scheme based on ConvNeXt network and multi-scale feature fusion. Stacked ConvNeXt blocks are used as an encoder to capture hierarchical multi-scale features, which are then fused in decoder for locating tampered pixels accurately. Combined loss and effective data augmentation are adopted to further improve the model performance. Extensive experimental results show that localization performance of our proposed scheme outperforms other state-of-the-art ones. The source code will be available at https://github.com/ZhuHC98/ITL-SSN.

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