Effective Deep Features for Image Splicing Detection

I. T. Ahmed, B. T. Hammad, N. Jamil
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引用次数: 6

Abstract

In the last few years, Digital image forgery (DIF) detection has become a prominent subject. Image splicing is a frequent approach for making digital image forgeries. Image splicing creates forged images that are hard to detect immediately. The detection accuracy of most existing image splicing detection algorithms is low, thus there is room for improvement. Therefore, this research provides an image splicing detection (ISD) method based on deep learning. The proposed image splicing detection has three stages: (1) RGB image conversion and image size fitting are examples of image pre-processing. (2) Using the pre-trained CNN AlexNet model, we extract the final discriminative feature for a preprocessed image. (3) Finally, the generated feature representation is used to train a Canonical Correlation Analysis (CCA) classifier for binary classification (authentic/forged). The accuracy of the proposed approach using a pre-trained AlexNet model based deep features with CCA classifier is equal to 98.79 % when evaluated on the CASIA v1.0 splicing image forgery database. In comparison, the proposed surpassed existing methods. In the future, the proposed could be applied to other types of image forgery, such as image retouching.
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图像拼接检测的有效深度特征
近年来,数字图像伪造(DIF)检测已成为一个突出的课题。图像拼接是一种常用的数字图像伪造方法。图像拼接产生伪造的图像,很难立即检测到。现有的图像拼接检测算法检测精度较低,存在很大的改进空间。因此,本研究提出了一种基于深度学习的图像拼接检测(ISD)方法。本文提出的图像拼接检测分为三个阶段:(1)RGB图像转换和图像尺寸拟合是图像预处理的两个步骤。(2)使用预训练好的CNN AlexNet模型,对预处理后的图像提取最终的判别特征。(3)最后,使用生成的特征表示来训练典型相关分析(CCA)分类器,用于二元分类(正品/伪造)。在CASIA v1.0拼接图像伪造数据库上对基于深度特征和CCA分类器的预训练AlexNet模型进行评估,准确率达到98.79%。相比之下,所提出的方法优于现有的方法。在未来,该方法可以应用于其他类型的图像伪造,如图像修饰。
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