朴素内容自适应嵌入的加权隐写-图像隐写分析

Pascal Schöttle, Stefan Korff, Rainer Böhme
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引用次数: 21

摘要

加权隐写图像(WS)隐写分析是估计空间域图像中LSB替换隐写的最新技术。然而,针对随机均匀嵌入设计的最强大的WS变体在对抗内容自适应隐写术时表现不佳。作为补救措施,我们提出了一种新的WS变体,专门用于检测隐藏在掩体中最难以检测的点的小型有效载荷,将其性能与已知方法进行基准测试,并实验研究选择自适应标准的影响,即识别异质掩体中所谓安全点的功能。我们发现难以单独从隐写图像中恢复的自适应准则比我们专门的WS方法提供了更强的安全性。
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Weighted stego-image steganalysis for naive content-adaptive embedding
Weighted stego-image (WS) steganalysis is the state of the art for estimating LSB replacement steganography in spatial domain images. However, the most powerful WS variants designed against random uniform embedding perform poorly against content-adaptive steganography. As a remedy, we propose a novel variant of WS which is specialized in detecting small payloads hidden exclusively in the least detectable spots of a cover, benchmark its performance against known methods, and experimentally investigate the influence of the choice of the adaptivity criterion, i. e., the function that identifies supposedly secure spots in a heterogeneous cover. We find that adaptivity criteria which are hard to recover from the stego image alone provide stronger security against our specialized WS method.
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