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首页> 外文期刊>ACM transactions on intelligent systems >Improved Approaches with Calibrated Neighboring Joint Density to Steganalysis and Seam-Carved Forgery Detection in JPEG Images
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Improved Approaches with Calibrated Neighboring Joint Density to Steganalysis and Seam-Carved Forgery Detection in JPEG Images

机译:JPEG图像中具有用于隐隐分析和缝刻伪造检测的校准相邻关节密度的改进方法

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摘要

Steganalysis and forgery detection in image forensics are generally investigated separately. We have designed a method targeting the detection of both steganography and seam-carved forgery in JPEG images. We analyze the neighboring joint density of the DCT coefficients and reveal the difference between the untouched image and the modified version. In realistic detection, the untouched image and the modified version may not be obtained at the same time, and different JPEG images may have different neighboring joint density features. By exploring the self-calibration under different shift recompressions, we propose calibrated neighboring joint density-based approaches with a simple feature set to distinguish steganograms and tampered images from untouched ones. Our study shows that this approach has multiple promising applications in image forensics. Compared to the state-of-the-art steganalysis detectors, our approach delivers better or comparable detection performances with a much smaller feature set while detecting several JPEG-based steganographic systems including DCT-embedding-based adaptive steganography and Yet Another Steganographic Scheme (YASS). Our approach is also effective in detecting seam-carved forgery in JPEG images. By integrating calibrated neighboring density with spatial domain rich models that were originally designed for steganalysis, the hybrid approach obtains the best detection accuracy to discriminate seam-carved forgery from an untouched image. Our study also offers a promising manner to explore steganalysis and forgery detection together.
机译:图像取证中的隐写分析和伪造检测通常单独进行研究。我们设计了一种针对JPEG图像中的隐写术和接缝雕刻伪造检测的方法。我们分析了DCT系数的邻近关节密度,并揭示了未触及图像和修改版本之间的差异。在实际检测中,可能无法同时获得未触摸的图像和修改后的版本,并且不同的JPEG图像可能具有不同的相邻关节密度特征。通过探索不同移位再压缩下的自校准,我们提出了一种基于校准的基于邻近关节密度的方法,该方法具有简单的功能集,可将隐写图像和篡改图像与未触摸图像进行区分。我们的研究表明,这种方法在图像取证中有许多有希望的应用。与最新的隐写分析检测器相比,我们的方法在检测几种基于JPEG的隐写系统(包括基于DCT嵌入的自适应隐写技术和另一个隐写方案(YASS))的同时,以更小的功能集提供了更好或相当的检测性能。 )。我们的方法还可以有效地检测JPEG图像中的接缝雕刻伪造。通过将校准的邻近密度与最初为隐写分析设计的空间域丰富的模型集成在一起,混合方法获得了最佳的检测精度,可以从未经触摸的图像中辨别出缝刻伪造品。我们的研究还提供了一种有前途的方式来一起探索隐写分析和伪造检测。

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