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Zero-watermarking Algorithm for Medical Volume Data Based on Difference Hashing

机译:基于差异哈希的医疗量数据零水印算法

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In order to protect the copyright of medical volume data, a new zerowatermarking algorithm for medical volume data is presented based on Legendre chaotic neural network and difference hashing in three-dimensional discrete cosine transform domain. It organically combines the Legendre chaotic neural network, three-dimensional discrete cosine transform and difference hashing, and becomes a kind of robust zero-watermarking algorithm. Firstly, a new kind of Legendre chaotic neural network is used to generate chaotic sequences, which causes the original watermarking image scrambling. Secondly, it uses three-dimensional discrete cosine transform to the original medical volume data, and the perception of the low frequency coefficient invariance in the three-dimensional discrete cosine transform domain is utilized to extract the first 4*5*4 coefficient in order to form characteristic matrix (16*5). Then, the difference hashing algorithm is used to extract a robust perceptual hashing value which is a binary sequence, with the length being 64-bit. Finally, the hashing value serves as the image features to construct the robust zero-watermarking. The results show that the algorithm can resist the attack, with good robustness and high security.
机译:为了保护医疗数据的版权,提出了一种基于Legendre混沌神经网络和三维离散余弦变换域差分哈希的医疗数据零水印算法。它结合了勒让德混沌神经网络,三维离散余弦变换和差分哈希的有机结合,成为一种鲁棒的零水印算法。首先,使用一种新型的勒让德混沌神经网络来生成混沌序列,从而导致原始的水印图像置乱。其次,将三维离散余弦变换用于原始医疗数据,并利用三维离散余弦变换域中低频系数不变性的感知来提取第一个4 * 5 * 4系数,以便形成特征矩阵(16 * 5)。然后,使用差分哈希算法提取鲁棒的感知哈希值,该值是二进制序列,长度为64位。最后,散列值用作构造鲁棒的零水印的图像特征。结果表明,该算法具有良好的鲁棒性和较高的安全性,能够抵抗攻击。

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