A novel model for splicing detection

Zhen Zhang, Guanghua Wang, Yukun Bian, Zhou Yu
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引用次数: 15

Abstract

With the advent of digital technology, digital image has gradually taken the place of the original analog photograph, and the forgery of digital image has become more and more easy and indiscoverable. Image splicing is a commonly used technique in image tampering. To implement image splicing detection a blind, passive and effective splicing detection scheme was proposed in this paper. Image splicing detection can be treated as a two-class pattern recognition problem, the model was based on moment features and some image quality metrics (IQMs) extracted from the given test image, which are sensitive to spliced image. Artificial neural network (ANN) is chosen as a classifier to train and test the given images. This model can measure statistical differences between original image and spliced image. Experimental results demonstrate that this new splicing detection algorithm is effective and reliable; indicating that the proposed approach has a broad application prospect.
一种新的剪接检测模型
随着数字技术的发展,数字图像逐渐取代了原始的模拟照片,数字图像的伪造变得越来越容易和难以发现。图像拼接是一种常用的图像篡改技术。为了实现图像拼接检测,本文提出了一种盲的、被动的、有效的拼接检测方案。图像拼接检测可以看作是一个两类模式识别问题,该模型基于从给定的测试图像中提取的矩特征和一些对拼接图像敏感的图像质量指标。选择人工神经网络(ANN)作为分类器对给定图像进行训练和测试。该模型可以测量原始图像与拼接图像之间的统计差异。实验结果表明,该拼接检测算法有效可靠;表明该方法具有广阔的应用前景。
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