基于相似图像固有统计特性的图像检索和离群点检测的隐写分析新范式

Yu Dong, Tao Zhang, Xiaodan Hou, Chen-yao Xu
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引用次数: 2

摘要

传统的隐写分析方法存在嵌入算法不匹配(EAM)和覆盖源不匹配(CSM)的问题。这些问题给在现实世界中使用隐写分析带来了困难。借鉴图像预分类的思想,提出了一种结合图像固有统计属性相似性检索(IISP)和无监督离群点检测的JPEG隐写分析范式。首先,从海量图像数据库中搜索与测试图像具有相似IISP的覆盖图像,建立辅助样本集;然后在由测试图像及其辅助样本集组成的测试集中进行离群点检测,判断测试图像的类型。实验结果表明,该方法可以有效地避免EAM和CSM。它比使用混合图像集作为训练样本的隐写分析策略表现出更好的性能。该方法采用无监督离群值检测,检测效率高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new steganalysis paradigm based on image retrieval of similar image-inherent statistical properties and outlier detection
Conventional steganalysis method generally encounters the problems of embedding algorithm mismatch (EAM) and cover source mismatch (CSM). These problems cause difficulties in the use of steganalysis in the real world. Learning from the idea of image pre-classified, this study presents a JPEG steganalysis paradigm combining the similarity retrieval of image-inherent statistical properties (IISP) and unsupervised outlier detection. First, cover images with similar IISP to the test image are searched from massive image database to establish an aided sample set. Outlier detection is then performed in a test set composed of the test image and its aided sample set to judge the type of the test image. Experimental results show that the proposed paradigm can effectively avoid EAM and CSM. It demonstrates better performance than the steganalysis strategy using a mixed image set as the training sample. The proposed method has high detection efficiency with the unsupervised outlier detection.
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