Cross-validation and blind feature analysis of 25 percent embedding on JPEG image format using SVM

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Abstract

This paper provides a result assessment of traditional JPEG picture extraction function steganalysis compared to a cross-validation picture. Four distinct algorithms are used as steganographic systems in the spatial and transform domain. They are LSB Matching, LSB Replacement, Pixel Value Differencing and F5.A 25 percentage of embedding with text embedding information is considered in this paper. The characteristics regarded for evaluation are the First Order, Second Order, Extended DCT characteristics, and Markov characteristics. Support Vector Machine is the classifier used here. In statistical recovery, six distinct kernels and four distinct sampling techniques are used for evaluation.

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Shankar, D. D., & Upadhyay, P. K. (2019). Cross-validation and blind feature analysis of 25 percent embedding on JPEG image format using SVM. International Journal of Innovative Technology and Exploring Engineering, 8(11 Special Issue), 1188–1191. https://doi.org/10.35940/ijitee.K1240.09811S19

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