Lightweight Deep Learning Model for Detection of Copy-Move Image Forgery with Post-Processed Attacks

Muhammad Naveed Abbas, M. S. Ansari, M. Asghar, N. Kanwal, Terry O'Neill, Brian Lee
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引用次数: 14

Abstract

As digital image forgery can be alarmingly detrimental, therefore, an insight into detection and classification of tampered digital images is of paramount importance. Without undermining the significance of other image forgery types, copy-move can be regarded as one of the most commonly used forgeries due to its ease of implementation. To counter the rapidly complicating forgery methods due to easily accessible technologically advanced tools, passive image forensic methods have also undergone massive evolution. Presently, deep learning based techniques are regarded as state-of-the-art for image processing/image forgery detection and classification due to their enhanced accuracy and automatic feature extraction capabilities. But the existing deep learning based techniques are time and resource-intensive as well. To cater for these solutions with complexities as stated, this research focuses on experimentation using two state-of-the-art deep learning models; SmallerVGGNet (inspired from VGGNet) and MobileNetV2. These two models are time and resource friendly deep learning frameworks for digital image forgery detection on embedded devices. After rigorous analysis, the study considers a suitably modified version of MobileNetV2 to be more effective on copy-move forgery detection which also caters for inconsistencies executed post-forgery including visual-appearance related such as brightness change, blurring and noise adding and geometric transformations such as cropping and rotation. The experimental results demonstrate that the proposed MobileNetV2 based model shows 84% True Positive Rate (TPR) and 14.35% False Positive Rate (FPR) for the detection of digital image forgery post-processed with the said multiple attacks.
带有后处理攻击的复制-移动图像伪造检测轻量级深度学习模型
由于数字图像伪造可能是惊人的有害,因此,洞察检测和分类篡改的数字图像是至关重要的。在不破坏其他图像伪造类型的重要性的情况下,由于易于实现,复制-移动可以被视为最常用的伪造之一。由于技术先进的工具易于获取,为了对抗快速复杂的伪造方法,被动图像取证方法也经历了巨大的发展。目前,基于深度学习的技术由于其提高的准确性和自动特征提取能力而被认为是图像处理/图像伪造检测和分类的最先进技术。但是现有的基于深度学习的技术也需要大量的时间和资源。为了满足这些具有复杂性的解决方案,本研究侧重于使用两种最先进的深度学习模型进行实验;SmallerVGGNet(灵感来自VGGNet)和MobileNetV2。这两种模型都是用于嵌入式设备数字图像伪造检测的时间和资源友好的深度学习框架。经过严格的分析,该研究认为适当修改的MobileNetV2版本在复制-移动伪造检测上更有效,这也满足了伪造后执行的不一致,包括视觉外观相关的亮度变化,模糊和噪声添加以及几何变换,如裁剪和旋转。实验结果表明,基于MobileNetV2的模型对上述多重攻击后的数字图像伪造检测的真阳性率为84%,假阳性率为14.35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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