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13 September 2023 Dual encoder network with efficient channel attention refinement module for image splicing forgery detection
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Abstract

In the realm of picture forensics, it might be difficult to find and locate an image-splicing forgery. To improve the accuracy of the picture forensic evaluation, we introduce a dual encoder network (DAE-Net) with an efficient channel attention (ECA) module. The ECA module creates a fusion approach with an attention mechanism that enables the model to concentrate on local objects’ tampering characteristics and increases the accuracy of multi-region tampering identification. We suggest combining a dual-coding network with a multi-scale dilated convolutional feature fusion module to better detect small target tampering zones. Experimental evidence suggests that DAE-Net outperforms state-of-the-art methods. The attack experiments also demonstrate the DEA-Net model’s stability and noise resistance.

© 2023 SPIE and IS&T
Xiangqiong Tan, Hongyi Zhang, Zuoshuai Wang, and Jun Tang "Dual encoder network with efficient channel attention refinement module for image splicing forgery detection," Journal of Electronic Imaging 32(5), 053012 (13 September 2023). https://doi.org/10.1117/1.JEI.32.5.053012
Received: 26 August 2022; Accepted: 28 August 2023; Published: 13 September 2023
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KEYWORDS
Counterfeit detection

Feature fusion

RGB color model

Ablation

Data modeling

Convolution

Image compression

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