LBRT: Local-Information-Refined Transformer for Image Copy–Move Forgery Detection

Author:

Liang Peng1,Li Ziyuan1ORCID,Tu Hang1ORCID,Zhao Huimin1

Affiliation:

1. School of Computer Science, Guangdong Polytechnic Normal University, Guangzhou 510630, China

Abstract

The current deep learning methods for copy–move forgery detection (CMFD) are mostly based on deep convolutional neural networks, which frequently discard a large amount of detail information throughout convolutional feature extraction and have poor long-range information extraction capabilities. The Transformer structure is adept at modeling global context information, but the patch-wise self-attention calculation still neglects the extraction of details in local regions that have been tampered with. A local-information-refined dual-branch network, LBRT (Local Branch Refinement Transformer), is designed in this study. It performs Transformer encoding on the global patches segmented from the image and local patches re-segmented from the global patches using a global modeling branch and a local refinement branch, respectively. The self-attention features from both branches are precisely fused, and the fused feature map is then up-sampled and decoded. Therefore, LBRT considers both global semantic information modeling and local detail information refinement. The experimental results show that LBRT outperforms several state-of-the-art CMFD methods on the USCISI dataset, CASIA CMFD dataset, and DEFACTO CMFD dataset.

Funder

General Program of National Natural Science Foundation of China

Publisher

MDPI AG

Reference40 articles.

1. Fridrich, J., Soukal, D., and Lukas, J. (2003, January 19–22). Detection of copy-move forgery in digital images. Proceedings of the Digital Forensic Research Workshop, Zaragoza, Spain.

2. Wu, Y., Abd-Almageed, W., and Natarajan, P. (2018, January 8–14). BusterNet: Detecting Copy-Move Image Forgery with Source/Target Localization. Proceedings of the European Conference on Computer Vision, Munich, Germany.

3. An End-to-End Dense-InceptionNet for Image Copy-Move Forgery Detection;Zhong;IEEE Trans. Inf. Forensics Secur.,2020

4. A serial image copy-move forgery localization scheme with source/target distinguishment;Chen;IEEE Trans. Multimed.,2021

5. Islam, A., Long, C., Basharat, A., and Hoogs, A. (2018, January 13–19). DOA-GAN: Dual-Order Attentive Generative Adversarial Network for Image Copy-Move Forgery Detection and Localization. Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, Seattle, WA, USA.

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