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A sparse representation-based approach for copy-move image forgery detection in smooth regions

机译:基于稀疏的表示,用于在平滑区域中复制图像伪造检测的方法

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Copy-move image forgery is the act of cloning a restricted region in the image and pasting it once or multiple times within that same image. This procedure intends to cover a certain feature, probably a person or an object, in the processed image or emphasize it through duplication. Consequences of this malicious operation can be unexpectedly harmful. Hence, the present paper proposes a new approach that automatically detects Copy-move Forgery (CMF). In particular, this work broaches a widely common open issue in CMF research literature that is detecting CMF within smooth areas. Indeed, the proposed approach represents the image blocks as a sparse linear combination of pre-learned bases (a mixture of texture and color-wise small patches) which allows a robust description of smooth patches. The reported experimental results demonstrate the effectiveness of the proposed approach in identifying the forged regions in CM attacks.
机译:复制移动图像伪造是克隆在图像中的受限制区域并在该相同图像内或多次粘贴其的行为。此过程打算在处理的图像中涵盖某个功能,可能是一个人或对象,或者通过复制来强调它。这种恶意操作的后果可能出乎意料地有害。因此,本文件提出了一种自动检测复制移动伪造(CMF)的新方法。特别是,这项工作在CMF研究文献中提供了广泛的开放问题,该研究文献在平滑区域内检测CMF。实际上,所提出的方法代表图像块作为预先学习的基础(纹理和色彩的小贴片的混合物)的稀疏线性组合,这允许稳健描述平滑斑块。报告的实验结果表明了所提出的方法在识别CM攻击中伪造区域的有效性。

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