Abstract

Aiming at the problems existing in existing steganalysis algorithms, this article proposes Motion Vector Coding Cost Change video steganalysis features based on Improved Motion Vector Reversion-Based features and Subtractive Probability of Coding Cost Optimal Matching features based on Subtractive Probability of Optimal Matching features from the perspective of the change of coding cost. Motion Vector Coding Cost Change features can be well consistent with the coding cost before recoding by analyzing the sub-pixel coding cost of recoding. By counting the sub-pixel coding costs of motion vectors before and after video recoding, the Sum of Absolute Difference values of motion vectors instead of predicted residuals are applied to steganalysis and detection, and the steganographic algorithm based on motion vectors is effectively detected. Experiments show that Motion Vector Coding Cost Change features have higher detection accuracy than Add-or-Subtract-One, Improved Motion Vector Reversion-Based, and other typical features in various steganography methods, and Subtractive Probability of Coding Cost Optimal Matching features have higher detection effect and better robustness than Subtractive Probability of Optimal Matching features.

Highlights

  • Traditional steganography and steganalysis techniques are mostly targeted at image carriers, and the technology is becoming more mature

  • The special video steganalysis techniques in compressed domain can be divided into four types: steganalysis method based on intra prediction mode, steganalysis method based on transformation coefficient, steganalysis method based on inter prediction mode, and steganalysis method based on MV (Motion Vector)

  • Since the length of the video is different from 100 to 2000 frames, each video is not cross-cut into 60 frames, and a total of 200 subvideo sets are used for experiments

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Summary

Introduction

Traditional steganography and steganalysis techniques are mostly targeted at image carriers, and the technology is becoming more mature. This value is very distinguishable and can be used as a classification feature. The feature includes the SAD value of the video MV at its original position, the position where the vertical component is incremented by one, the position where the horizontal component is decremented by one, the position where the vertical component is decremented by one, and the position where the horizontal component is incremented by one and the variation value of probability of coding cost optimal matching before and after the recompression which enhances robustness compared to SPOM. A proposal to combine the two is proposed and classification method is the same as the previous section

Design of the steganalysis method
Test sequence
Conclusion
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