Abstract

Up to now, most of the forensics methods have attached more attention to natural content images. To expand the application of image forensics technology, forgery detection for certificate images that can directly represent people’s rights and interests is investigated in this paper. Variable tampered region scales and diverse manipulation types are two typical characteristics in fake certificate images. To tackle this task, a novel method called Multi-level Feature Attention Network (MFAN) is proposed. MFAN is built following the encoder–decoder network structure. In order to extract features with rich scale information in the encoder, on the one hand, we employ Atrous Spatial Pyramid Pooling (ASPP) on the final layer of a pre-trained residual network to capture the contextual information at different scales; on the other hand, low-level features are concatenated to ensure the sensibility to small targets. Furthermore, the resulting multi-level features are recalibrated on channels for irrelevant information suppression and enhancing the tampered regions, guiding the MFAN to adapt to diverse manipulation traces. In the decoder module, the attentive feature maps are convoluted and unsampled to effectively generate the prediction mask. Experimental results indicate that the proposed method outperforms some state-of-the-art forensics methods.

Highlights

  • With the development of computer technology, image editing software is becoming more and more popular, such as Photoshop, CorelDRAW and Fireworks

  • To promote the application of image forensics technology in broader areas, in this paper, we identify the authenticity of certificate images, which can directly represent people’s rights and interests

  • Experimental results verify that the proposed method outperforms the state-of-the-art image forensics methods

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Summary

Introduction

With the development of computer technology, image editing software is becoming more and more popular, such as Photoshop, CorelDRAW and Fireworks. Passive methods locate the tampered area by analyzing features left by manipulations rather than the extrinsic information of test image. Many passive forensics techniques have been reported Among these methods, copy-move [5,6], splicing [7,8], removal [9], enhancement [10], face anti-spoofing [11]. In order to identify the authenticity of certificate images, variable tampered area scales and diverse manipulations are two important issues to be solved. We address the above issues and propose a multi-level features attention network for fake certificate image detection. (1) To preserve more information and avoid failures in localizing small tampered objects, low-level convolution layers are made use of to fuse the final feature map.

Related Work
Image Forgery Detection and Localization
Attention Mechanism
Overview
Encoder
Decoder and Loss Functions
Implementation Details
Experimental Results
Dataset and Evaluation Metrics
Ablation Study
Methods
Comparison against Other Methods
Method
Performance on Natural Content Image
Conclusions
Full Text
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