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Image tampering detection for forensics applications.

机译:用于取证应用的图像篡改检测。

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摘要

The rapid growth of image editing softwares has given rise to large amounts of doctored images circulating in our daily lives, generating a great demand for automatic forgery detection algorithms in order to determine the authenticity of a candidate image in a timely fashion. A good forgery detection algorithm should be passive and blind, requiring no extra prior knowledge of the image content or any embedded watermarks. By analyzing the abnormal behaviors of doctored images from authentic images, one can design forgery detectors based on a collection of cues in the image formation process.;In this thesis, we first present a fully automatic consistency checking algorithm for detecting arbitrarily-shaped splicing areas in a digital image. We specifically study the Camera Response Function (CRF), a fundamental property in cameras mapping input irradiance to output image intensity. A test image is first automatically segmented into distinct areas. One CRF is estimated from each area using geometric invariants from Locally Planar Irradiance Points (LPIPs). To classify a boundary segment between two areas as authentic or spliced, CRF-based cross fitting and local image features are computed and fed to statistical classifiers. Such segment-level scores are further fused to infer the image-level authenticity decision. Tests on two benchmark data sets reach performance levels of 70% precision and 70% recall, showing promising potential for real-world applications. Moreover, we examine individual features and discover the key factor in splicing detection. Our experiments show that the anomaly introduced around splicing boundaries plays the major role in successful detection. Such finding is important for designing effective and efficient solutions to image splicing detection.;As for the second focus of this thesis, we move beyond single forgery detector and propose a universal framework to integrate outputs from multiple detectors. Multiple cue fusion provides promises for improving the detection robustness, however has never been systematically studied before. By fusing multiple cues, the tampering detection process does not rely entirely on a single detector and hence can be robust in face of missing or unreliable detectors. We propose a statistical fusion framework based on Discriminative Random Fields (DRF) to integrate multiple cues suitable for forgery detection, such as double quantization artifacts and camera response function inconsistency. The detection results using individual cues are used as observations from which the DRF model parameters and the most likely node labels are inferred indicating whether a local block belongs to the tampered foreground or the authentic background. Such inference results also provide information about localization of the suspect spliced regions. The proposed framework is effective and general - outperforming individual detectors over systematic evaluation and easily extensible to other detectors using different cues.;Both the consistency checking and multiple cue fusion frameworks are highly flexible, ready to accommodate other cues. The contribution of this thesis is therefore not limited to workable, powerful algorithms for forgery detection, but more importantly generalizable strategies in the design of potential forgery detection modules that might arise in the future.
机译:图像编辑软件的快速发展引起了我们日常生活中大量的篡改图像的流传,这对自动伪造检测算法提出了很高的要求,以便及时确定候选图像的真实性。一个好的伪造检测算法应该是被动的和盲目的,不需要对图像内容或任何嵌入的水印有额外的先验知识。通过从真实图像中分析篡改图像的异常行为,可以根据图像形成过程中的提示集合设计伪造检测器。本文首先提出了一种用于检测任意形状的拼接区域的全自动一致性检查算法。在数字图像中。我们专门研究了相机响应功能(CRF),这是相机将输入辐照度映射到输出图像强度的基本属性。首先将测试图像自动分割为不同的区域。使用局部平面辐照点(LPIP)的几何不变量,从每个区域估计一个CRF。为了将两个区域之间的边界段分类为真实的或拼接的,计算基于CRF的交叉拟合和局部图像特征,并将其输入统计分类器。进一步融合此类片段级别的分数,以推断图像级别的真实性决策。在两个基准数据集上进行的测试可达到70%的精度和70%的查全率,显示出在实际应用中的潜力。此外,我们检查了各个功能并发现了拼接检测中的关键因素。我们的实验表明,围绕拼接边界引入的异常在成功检测中起着重要作用。这一发现对于设计有效和有效的图像拼接检测解决方案很重要。;至于本文的第二个重点,我们超越了单一的伪造检测器,并提出了一个通用框架来集成多个检测器的输出。多重提示融合为改善检测鲁棒性提供了希望,但是以前从未进行过系统的研究。通过融合多个线索,篡改检测过程不会完全依赖单个检测器,因此在缺少检测器或不可靠的检测器的情况下可能很健壮。我们提出了一种基于鉴别随机场(DRF)的统计融合框架,以整合适用于伪造检测的多个线索,例如双重量化伪像和相机响应函数不一致。使用单个线索的检测结果用作观察结果,从中可以推断出DRF模型参数和最可能的节点标签,指示本地块是属于篡改的前景还是真实的背景。这样的推断结果还提供有关可疑剪接区域的定位的信息。所提出的框架是有效且通用的-通过系统评估胜过单个检测器,并且易于扩展到使用不同线索的其他检测器。一致性检查和多个线索融合框架都非常灵活,可以容纳其他线索。因此,本论文的贡献不仅限于可行的,功能强大的伪造检测算法,而且更重要的是在将来可能出现的潜在伪造检测模块设计中的可推广策略。

著录项

  • 作者

    Hsu, Jessie Yu-Feng.;

  • 作者单位

    Columbia University.;

  • 授予单位 Columbia University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 163 p.
  • 总页数 163
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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