Robust video steganography for social media sharing based on principal component analysis

被引:0
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作者
Pingan Fan
Hong Zhang
Xianfeng Zhao
机构
[1] Chinese Academy of Sciences,State Key Laboratory of Information Security, Institute of Information Engineering
[2] University of Chinese Academy of Sciences,School of Cyber Security
关键词
Steganography; Video; Robust; Social media; Hidden communication;
D O I
暂无
中图分类号
学科分类号
摘要
Most social media channels are lossy where videos are transcoded to reduce transmission bandwidth or storage space, such as social networking sites and video sharing platforms. Video transcoding makes most video steganographic schemes unusable for hidden communication based on social media. This paper proposes robust video steganography against video transcoding to construct reliable hidden communication on social media channels. A new strategy based on principal component analysis is provided to select robust embedding regions. Besides, side information is generated to label these selected regions. Side information compression is designed to reduce the transmission bandwidth cost. Then, one luminance component and one chrominance component are joined to embed secret messages and side information, notifying the receiver of correct extraction positions. Video preprocessing is conducted to improve the applicability of our proposed method to various video transcoding mechanisms. Experimental results have shown that our proposed method provides stronger robustness against video transcoding than other methods and achieves satisfactory security performance against steganalysis. Compared with some existing methods, our proposed method is more robust and reliable to realize hidden communication over social media channels, such as YouTube and Vimeo.
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