Large Feature Mining With Ensemble Learning for Image Forgery Detection

Qingzhong Liu, Tze-Li Hsu
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Abstract

The detection of different types of forgery manipulation including seam-carving in JPEG images is a hot spot in image forensics. Seam carving was originally designed for content-aware image resizing. It is also being used for forgery manipulation. It is still very challenging to effectively identify the seam carving forgery under recompression. To address the highly challenging detection problems, this chapter introduces an effective approach with large feature mining. Ensemble learning is used to deal with the high dimensionality and to avoid overfitting that may occur with some traditional learning classifier for the detection. The experimental results validate the efficacy of proposed approach to detecting JPEG double compression and exposing the seam-carving forgery while the JPEG recompression is proceeded at the same quality and a lower quality, which is generally much harder for traditional detection methods. The methodology introduced in this chapter provides a strategy and realistic approach to resolve the highly challenging problems in image forensics.
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基于集成学习的大特征挖掘图像伪造检测
对JPEG图像中各种伪造手法的检测是图像取证领域的研究热点。接缝雕刻最初是为内容感知图像调整大小而设计的。它也被用于伪造操作。如何有效地识别再压缩下的缝刻伪造,仍然是一个非常具有挑战性的问题。为了解决极具挑战性的检测问题,本章介绍了一种使用大特征挖掘的有效方法。集成学习用于处理高维问题,避免了传统学习分类器可能出现的过拟合问题。实验结果验证了该方法在对JPEG图像进行相同质量和较低质量的再压缩时,能够有效地检测出JPEG图像的双重压缩并暴露出缝雕伪造,这是传统检测方法难以做到的。本章介绍的方法为解决图像取证中极具挑战性的问题提供了一种策略和现实的方法。
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