2011 | OriginalPaper | Buchkapitel
LinL:Lost in n-best List
verfasst von : Peng Meng, Yun-Qing Shi, Liusheng Huang, Zhili Chen, Wei Yang, Abdelrahman Desoky
Erschienen in: Information Hiding
Verlag: Springer Berlin Heidelberg
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Translation-based steganography (TBS) is a new kind of text steganographic scheme. However, contemporary TBS methods are vulnerable to statistical attacks. Differently, this paper presents a novel TBS, namely Lost in n-best List, abbreviated as LinL, that is resilient against the current statistical attacks. LinL employs only one Statistical Machine Translator (SMT) in the encoding process which selects one of the n-best list of each cover text sentence in order to camouflage messages in stegotext. The presented theoretical analysis demonstrates that there is a classification accuracy upper bound between normal translated text and the stegotext. When the text size is 1000 sentences, the theoretical maximum classification accuracy is about 60%. The experiment results also show current steganalysis methods cannot detect LinL.