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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Transferable heterogeneous feature subspace learning for JPEG mismatched steganalysis
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Transferable heterogeneous feature subspace learning for JPEG mismatched steganalysis

机译:JPEG不匹配的隐星分析可转移的异构特征子空间学习

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摘要

Steganalysis is a technique that detects the presence of secret information in multimedia data. Many steganalysis algorithms have been proposed with high detection accuracy; however, the difference in statistical distribution between training and testing sets can cause mismatch problems, which will degrade the performance of traditional steganalysis algorithms. To solve this problem, we propose a transferable heterogeneous feature subspace learning (THFSL) algorithm for JPEG mismatched steganalysis. Our approach considers the feature space in each domain as a combination of the domain-independent features and the domain-related features. We use the transformation matrix to transfer both the domain-independent and domain-related features from the source and target domains to a common feature subspace, where each target sample can be better represented by a combination of source samples. By imposing low-rank constraints on the domain-independent features, the structures of data can be preserved, which can capture the intrinsic structures for discriminating cover and stego images. Our method can avoid a potentially negative transfer by using a sparse matrix to model the domain-related features and, thus, is more robust to different domain changes in mismatched steganalysis. Extensive experiments on various mismatched steganalysis tasks show the superiority of the proposed method over the state-of-the art methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:steganAlysis是一种检测多媒体数据中秘密信息的技术。已经提出了许多沉淀算法,具有高检测精度;然而,训练和测试集之间的统计分布差异会导致不匹配的问题,这将降低传统的隐星分析算法的性能。为了解决这个问题,我们提出了一种可转移的异构特征子空间学习(THFSL)算法,用于JPEG不匹配的麻木分析。我们的方法将每个域中的特征空间考虑为独立于域 - 独立的功能和与域相关功能的组合。我们使用转换矩阵将域与域和域与域相关的特征传输到源域和目标域到公共特征子空间,其中每个目标样本可以通过源样本的组合来更好地表示。通过对域无关的特征施加低级约束,可以保留数据的结构,这可以捕获用于识别盖子和STEGO图像的内在结构。我们的方法可以通过使用稀疏矩阵来避免潜在的负转移来模拟与域相关的特征,因此对不同的域变形变化更加强大,对不匹配的麻氏分析。关于各种不匹配的麻木分析任务的广泛实验表明,在最先进的方法上显示了所提出的方法的优越性。 (c)2019年elestvier有限公司保留所有权利。

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