Artificial neural network for steganography

被引:0
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作者
Sabah Husien
Haitham Badi
机构
[1] Al Yarmouk University College,
[2] University of Malaya,undefined
来源
关键词
Human–computer interaction; Artificial neural network ; System identification; Neuro-identifier; Cryptanalysis;
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学科分类号
摘要
The digital information revolution has brought about changes in our society and our lives. The many advantages of digital information have also generated new challenges and new opportunities for innovation. The strength of the information hiding science is due to the nonexistence of standard algorithms to be used in hiding secret message. Also, there is randomness in hiding method such as combining several media (covers) with different methods to pass secret message. Information hiding represents a class of process used to embed data into various forms of media such as image, audio, or text. The proposed text in image cryptography and steganography system (TICSS) is an approach used to embed text into gray image (BMP). TICSS is easily applied by any end user.
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页码:111 / 116
页数:5
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