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Fusion of block and keypoints based approaches for effective copy-move image forgery detection

机译:基于块和关键点的融合方法可有效进行复制移动图像伪造检测

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摘要

Keypoint-based and block-based methods are two main categories of techniques for detecting copy-move forged images, one of the most common digital image forgery schemes. In general, block-based methods suffer from high computational cost due to the large number of image blocks used and fail to handle geometric transformations. On the contrary, keypoint-based approaches can overcome these two drawbacks yet are found difficult to deal with smooth regions. As a result, fusion of these two approaches is proposed for effective copy-move forgery detection. First, our scheme adaptively determines an appropriate initial size of regions to segment the image into non-overlapped regions. Feature points are extracted as keypoints using the scale invariant feature transform (SIFT) from the image. The ratio between the number of keypoints and the total number of pixels in that region is used to classify the region into smooth or non-smooth (keypoints) regions. Accordingly, block based approach using Zernike moments and keypoint based approach using SIFT along with filtering and post-processing are respectively applied to these two kinds of regions for effective forgery detection. Experimental results show that the proposed fusion scheme outperforms the keypoint-based method in reliability of detection and the block-based method in efficiency.
机译:基于关键点的方法和基于块的方法是检测复制移动伪造图像的技术的两大类,这是最常见的数字图像伪造方案之一。通常,基于块的方法由于使用大量图像块而遭受高计算成本,并且无法处理几何变换。相反,基于关键点的方法可以克服这两个缺点,但发现难以处理平滑区域。结果,提出了这两种方法的融合以用于有效的复制移动伪造检测。首先,我们的方案自适应地确定适当的区域初始大小,以将图像分割为非重叠区域。使用比例不变特征变换(SIFT)从图像中提取特征点作为关键点。关键点数与该区域中像素总数之间的比率用于将区域划分为平滑或非平滑(关键点)区域。因此,分别将使用Zernike矩的基于块的方法和使用SIFT以及基于滤波和后处理的基于关键点的方法分别应用于这两种区域,以进行有效的伪造检测。实验结果表明,所提出的融合方案在检测可靠性方面优于基于关键点的方法,在效率上优于基于块的方法。

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