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Traceable content protection based on chaos and neural networks

机译:基于混沌和神经网络的可追溯内容保护

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摘要

In this paper, a media content encryption/decryption algorithm is designed based on a chaos system and neural networks, which generates random sequences with chaos, and encrypts or decrypts media contents with neural networks in a parallel way. In this scheme, different decryption keys can be used to recover the media content into different copies. That is, the decryption operation gets the content containing certain random sequence that can be used as the identification. With respect to this property, the scheme is used for secure content distribution. Taking the audio content for example, it is encrypted by a key at the sender side and decrypted by different keys at the receiver side. The differences between decryption keys lead to different decrypted audio copies. If one customer distributes his copy to other unauthorized customers, the chaotic sequence contained in the copy can tell the illegal customer. The performances, including security, imperceptibility and robustness, are analyzed, and some experimental results are given to show the scheme's practicability.
机译:本文设计了一种基于混沌系统和神经网络的媒体内容加解密算法,该算法生成具有混沌的随机序列,并利用神经网络对媒体内容进行并行加密或解密。在此方案中,可以使用不同的解密密钥将媒体内容恢复为不同的副本。即,解密操作获得包含可以用作标识的某些随机序列的内容。关于此属性,该方案用于安全内容分发。以音频内容为例,它在发送方通过密钥进行加密,在接收方通过不同的密钥进行解密。解密密钥之间的差异导致了不同的解密音频副本。如果一个客户将其副本分发给其他未经授权的客户,则副本中包含的混乱序列会告诉非法客户。分析了包括安全性,不可感知性和鲁棒性在内的性能,并给出了一些实验结果,证明了该方案的实用性。

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