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An Improved Approach to Exposing JPEG Seam Carving Under Recompression

机译:一种在压缩下显示JPEG接缝雕刻的改进方法

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摘要

As a popular method for image and video retargeting, seam carving has been used for image/video forgery manipulation. Although significant advances have been made in detecting seam-carving forgery, there are very few contributions in exposing the forgery from recompressed JPEG images, especially the doctored images that are recompressed at the same or a lower quality. The detection is generally challenging because the recompression after tampering compromises the existing forgery traces. Aiming to address this problem, we propose a hybrid large-feature mining-based approach that contains multiple types of large features. Ensemble learning is used to deal with the high-feature dimensionality. This paper shows that the proposed approach effectively distinguishes the seam-carved JPEG images from untouched JPEG images and improves the detection accuracy. In our proposed multiple types of features, directional derivative-based feature set and Gabor residual-based feature set generally perform the best. This paper also indicates that feature selection may play an important role to greatly reduce the feature number while maintaining a better or comparable detection accuracy.
机译:作为图像和视频重新定向的一种流行方法,接缝雕刻已被用于图像/视频伪造操纵。尽管在检测接缝雕刻伪造方面已取得重大进展,但在从重新压缩的JPEG图像(尤其是以相同或更低质量重新压缩的刮刀图像)中暴露伪造方面,贡献很小。由于篡改后的重新压缩会损害现有的伪造痕迹,因此检测通常具有挑战性。为了解决这个问题,我们提出了一种基于混合大特征挖掘的方法,该方法包含多种类型的大特征。集成学习用于处理高维度的维度。本文表明,提出的方法有效地区分了接缝雕刻的JPEG图像和未触摸的JPEG图像,并提高了检测精度。在我们提出的多种类型的特征中,基于方向导数的特征集和基于Gabor残差的特征集通常表现最佳。本文还指出,特征选择可能在保持更好或相当的检测精度的同时,在大大减少特征数量方面起着重要作用。

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