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Extraction of shape feature for image authentication

机译:提取形状特征以进行图像认证

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摘要

In this paper, a shape feature using Zernike moments for image authentication is proposed. It can be used as an image hash sequence. At first the color space of the input image is transformed from RGB to YCbCr. Then these three components are mapped to a unit circle by conformal mapping. Then Zernike moments of three image component s are calculated and the amplitudes and phases of modified Zernike moments are connected to form the intermediate hash. Lastly, the final hash sequence is obtained by pseudo-randomly permuting the intermediate hash sequence. Similarity between hashes is measured by a new distance defined in this paper. Experimental results show that this method is robust against most content-preserving attacks. The threshold can be got by robustness and uniqueness tests. The distance of hashes between two different images is bigger than the threshold. And this method can be used to detect image forgery involving structural and color modifications.
机译:本文提出了一种使用Zernike矩进行图像认证的形状特征。它可以用作图像哈希序列。首先,将输入图像的色彩空间从RGB转换为YCbCr。然后,通过保形映射将这三个分量映射到一个单位圆。然后,计算三个图像分量s的Zernike矩,并连接修改后的Zernike矩的幅度和相位,以形成中间哈希。最后,通过伪随机地排列中间哈希序列来获得最终的哈希序列。哈希值之间的相似性是通过本文定义的新距离来衡量的。实验结果表明,该方法可抵抗大多数内容保留攻击。该阈值可以通过健壮性和唯一性测试来获得。两个不同图像之间的哈希距离大于阈值。并且该方法可用于检测涉及结构和颜色修改的图像伪造。

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