Copy-rotate-move forgery detection based on spatial domain

Sondos M. Fadl, N. Semary, M. Hadhoud
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引用次数: 11

Abstract

Digital image tampering becomes a common information falsification trend. Copy-Move forgery is one of the tampering types that are used. Image forgery is the science of detecting image tempering whether with a previous knowledge about the source image (active) or without (passive). In this paper, we propose a method which is efficient and fast for detecting Copy-Move regions even when the copied region was undergone rotation modify in spatial domain. The proposed method accelerates blocking matching strategy by parallel comparing between blocks. Firstly, the image is divided into fixed-size overlapping blocks then features are extracted for each block. k-means clustering technique is used to cluster the blocks into different cluster. The feature vectors of each cluster blocks are lexicographically sorted by radix sort, and then a similarity measure is calculated between each nearby blocks to determine their similarity. The experimental results show that the proposed method can detect the duplicated regions efficiently even when an image was modified by jpeg compression, rotation and smoothing conditions. The proposed system reduced processing time up to 75% of other previous works.
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基于空间域的复制-旋转-移动伪造检测
数字图像篡改已成为一种普遍的信息篡改趋势。复制-移动伪造是使用的篡改类型之一。图像伪造是一门检测图像篡改的科学,无论是否事先知道源图像(主动)或没有(被动)。本文提出了一种即使被复制区域在空间域中进行了旋转修改,也能快速有效地检测出复制-移动区域的方法。该方法通过块间并行比较加速块匹配策略。首先将图像分割成固定大小的重叠块,然后对每个块提取特征;采用k-均值聚类技术将数据块聚到不同的聚类中。对每个聚类块的特征向量按字典顺序进行基数排序,然后计算邻近块之间的相似性度量以确定它们的相似性。实验结果表明,该方法在jpeg压缩、旋转、平滑等条件下均能有效检测出重复区域。建议的系统将处理时间减少到以前其他工作的75%。
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