Embedding a Large Amount of Information Using High Secure Neural Based Steganography Algorithm
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Embedding a Large Amount of Information Using High Secure Neural Based Steganography Algorithm

Authors: Nameer N. EL-Emam

Abstract:

In this paper, we construct and implement a new Steganography algorithm based on learning system to hide a large amount of information into color BMP image. We have used adaptive image filtering and adaptive non-uniform image segmentation with bits replacement on the appropriate pixels. These pixels are selected randomly rather than sequentially by using new concept defined by main cases with sub cases for each byte in one pixel. According to the steps of design, we have been concluded 16 main cases with their sub cases that covere all aspects of the input information into color bitmap image. High security layers have been proposed through four layers of security to make it difficult to break the encryption of the input information and confuse steganalysis too. Learning system has been introduces at the fourth layer of security through neural network. This layer is used to increase the difficulties of the statistical attacks. Our results against statistical and visual attacks are discussed before and after using the learning system and we make comparison with the previous Steganography algorithm. We show that our algorithm can embed efficiently a large amount of information that has been reached to 75% of the image size (replace 18 bits for each pixel as a maximum) with high quality of the output.

Keywords: Adaptive image segmentation, hiding with high capacity, hiding with high security, neural networks, Steganography.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1062192

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References:


[1] S-Tools (http://digitalforensics. champlain. edu/ download/ s-tools 4.zip).
[2] Chandramouli, R. and N. Memon,. "Analysis of LSB based image steganography techniques," Proc. of ICIP, Thessaloniki, Greece, pp. 7- 10, Oct. 2001.
[3] Dumitrescu, S., W. Xiaolin and Z. Wang, "Detection of LSB steganography via sample pair analysis," In: LNCS, Springer-Verlag, New York, Vol. 2578/2003, pp: 355-372, 2003.
[4] Ahn, L.V. and N.J. Hopper, "Public-key steganography. In Lecture Notes in Computer Science of Advances in Cryptology," EUROCRYPT 2004, Vol. 3027 / 2004, Springer-Verlag Heidelberg, pp: 323-341, 2004.
[5] Pang, H.H., K.L. Tan and X. Zhou, "Steganographic schemes for file system and b-tree," IEEE Trans. on Knowledge and Data Engineering, Vol. 16, pp.701-713, 2004.
[6] Dobsicek, M., "Extended steganographic system," In: 8th Intl. Student Conf. on Electrical Engineering. FEE CTU. 2004
[7] Mittal, U. and N. Phamdo, "Hybrid digital-analog joint source-channel codes for broadcasting and robust communications," IEEE Trans. on Info. Theory, vol. 48, pp. 1082 -1102, 2002.
[8] Pavan, S., S. Gangadharpalli and V. Sridhar, "Multivariate entropy detector based hybrid image registration algorithm," IEEE Intl. Conf. on Acoustics, Speech and Signal Processing, pp: 18-23, 2005.
[9] Moulin, P. and J.A. O-Sullivan, "Information-theoretic analysis of information hiding," IEEE Trans. on Info. Theory, vol. 49, pp. 563- 593, 2003.
[10] Amin, P., N. Liu and K. Subbalakshmi, "Statistically secure digital image data hiding," IEEE Multimedia Signal Processing MMSP05, China, 2005.
[11] Jackson, J., G. Gunsch, R. Claypoole and G. Lamont,. "Detecting novel steganography with an anomaly- based strategy," J. Electr. Imag., Vol. 13, 860- 870, 2004.
[12] Nameer N. EL-Emam, "Reallocation of mesh points in fluid problems using back-propagation algorithm," Information Journal, Vol 9, No. 1, pp 175-184. January 2006.
[13] C. Zhang, H.W. Guesgen, W.K. Yeap "Neural Based Steganography, Lecture note in computer science Computational Intelligence. Neural Networks," LNAI 3157, pp. 429-435, Springer-Verlag Berlin Heidelberg 2004.