Sadat Elaheh Sadat, Faez Karim, Saffari Pour Mohsen
Electrical Engineering Department, Amirkabir University of Technology, Tehran 15875-4413, Iran.
Department of Mechanical Engineering, Sharif University of Technology, Tehran 1458889694, Iran.
Entropy (Basel). 2018 Apr 2;20(4):244. doi: 10.3390/e20040244.
In this paper, a new method is proposed for motion vector steganalysis using the entropy value and its combination with the features of the optimized motion vector. In this method, the entropy of blocks is calculated to determine their texture and the precision of their motion vectors. Then, by using a fuzzy cluster, the blocks are clustered into the blocks with high and low texture, while the membership function of each block to a high texture class indicates the texture of that block. These membership functions are used to weight the effective features that are extracted by reconstructing the motion estimation equations. Characteristics of the results indicate that the use of entropy and the irregularity of each block increases the precision of the final video classification into cover and stego classes.
本文提出了一种利用熵值及其与优化运动矢量特征相结合的运动矢量隐写分析新方法。该方法通过计算块的熵来确定其纹理和运动矢量的精度。然后,利用模糊聚类将块聚类为高纹理块和低纹理块,每个块属于高纹理类的隶属函数表示该块的纹理。这些隶属函数用于对通过重构运动估计方程提取的有效特征进行加权。结果特征表明,熵的使用和每个块的不规则性提高了最终视频分类为载体类和隐写类的精度。