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Improvement of Universal Steganalysis Based on SPAM and Feature Optimization

机译:基于SPAM和特征优化的通用隐写分析的改进

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The tendency for high-dimension of universal steganalysis characteristics toward intensifying, and lead to the rapid rise in complexity of algorithm in time and space domain. So maintain the level of detection rates, and reduce the dimension of features at the same time, have significance in research of steganalysis. This paper determines the optimal dimension of feature vectors by principal component analysis; using the concept of Fisher linear discriminant, with the degree of "aggregations within class" and "discreteness between classes" to evaluate the ability of each dimension features to distinguish natural and hidden carrier, and then select the optimal subset. The analysis directs at the mainstream universal steganalysis model-SPAM model, and the simulation results show that optimal subset has a good detection and low computational complexity.
机译:通用隐写分析特征的高维化趋势趋于增强,并导致算法在时空领域的复杂性迅速提高。因此,保持检出率的水平,同时减小特征的维数,对隐写分析的研究具有重要意义。本文通过主成分分析确定特征向量的最优维。使用费舍尔线性判别的概念,以“类别内的聚集度”和“类别间的离散度”的程度来评估每个维度特征区分自然载波和隐藏载波的能力,然后选择最佳子集。分析直接针对主流通用隐写分析模型SPAM模型,仿真结果表明最优子集具有良好的检测能力和较低的计算复杂度。

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