首页> 外文会议>SEMCCO 2011;International conference on swarm, evolutionary, and memetic computing >Steganalysis for Calibrated and Lower Embedded Uncalibrated Images
【24h】

Steganalysis for Calibrated and Lower Embedded Uncalibrated Images

机译:对已校准和未嵌入的未校准图像进行隐写分析

获取原文

摘要

The objective of steganalysis is to detect messages hidden in a cover images, such as digital images. The ultimate goal of a steganalyst is to extract and decipher the secret message. In this paper, we present a powerful new blind steganalytic scheme that can reliably detect hidden data with a relatively small embedding rate in JPEG images as well as using a technique known as calibration. This would increase the success rate of steganalysis by detecting data in transform domain. This scheme is feature based in the sense that features that are sensitive to embedding changes are being employed as means of steganalysis. The features are extracted in DCT domain. DCT domain features have extended DCT features and Markovian features merged together in calibration technique to eliminate the drawbacks of both(inter and intra block dependency) respectively . For the lesser embedding rate, the features are considered separately to evolve a better classification rate. The blind steganalytic technique has a broad spectrum of analyzing different embedding techniques The feature set contains 274 features by merging both DCT features and Markovian features. The extracted features are being fed to a classifier which helps to distinguish between a cover and stego image. Support Vector Machine is used as classifier here.
机译:隐写分析的目的是检测隐藏在封面图像(例如数字图像)中的邮件。隐身分析师的最终目标是提取和解密秘密消息。在本文中,我们提出了一种功能强大的新型盲隐式分析方案,该方案能够以相对较小的嵌入率可靠地检测JPEG图像中的隐藏数据,并使用一种称为校准的技术。通过在变换域中检测数据,可以提高隐写分析的成功率。该方案是基于特征的,因为对嵌入变化敏感的特征正被用作隐写分析的手段。在DCT域中提取特征。 DCT域特征具有扩展的DCT特征和马尔可夫特征,它们在校准技术中合并在一起,分别消除了两者(内部和内部块依赖)的缺点。对于较小的嵌入率,将这些要素分别考虑以发展出更好的分类率。盲隐写分析技术具有广泛的分析不同嵌入技术的功能。特征集通过合并DCT特征和Markovian特征而包含274个特征。提取的特征将被馈送到分类器,以帮助区分封面图像和隐身图像。支持向量机在这里用作分类器。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号