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GLCM based features for steganalysis

机译:基于GLCM的隐写分析功能

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摘要

Steganalysis is a process by which we can detect the secret message i.e. hidden by using various Steganography algorithms. There are various universal Steganalysis methods and features based Steganalysis is one of them. In this paper we have used three different Steganographic methods, NsF5, JP Hide & Seek and PQ for hiding the secret information within images. We have used four embedding rates: 10%, 25%, 50% and 100%. In the construction of the image database, we have employed 2300 images of same size (640 × 480). From the constructed database, 80 per cent is used for training the classifier and remaining 20 per cent database is used for testing classification algorithm. Then we have compared the performance of proposed features set with the state of art using these three classification algorithms i.e. J48, SMO and Naïve Baye's in terms of accuracy rate and speed.
机译:隐写分析是一个过程,通过该过程我们可以检测到秘密消息,即通过使用各种隐写术算法将其隐藏。有多种通用的隐写分析方法,基于隐写分析的功能就是其中之一。在本文中,我们使用了三种不同的隐写方法:NsF5,JP Hide&Seek和PQ来隐藏图像中的秘密信息。我们使用了四种嵌入率:10%,25%,50%和100%。在图像数据库的构建中,我们使用了2300张相同大小(640×480)的图像。从构建的数据库中,有80%用于训练分类器,其余20%数据库用于测试分类算法。然后,我们使用这三种分类算法(即J48,SMO和NaïveBaye's)在准确率和速度方面将建议的功能集的性能与最新技术进行了比较。

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