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Digital Forgery Estimation into DCT Domain - A Critical Analysis

机译:数字伪造估计为DCT域 - 一个关键分析

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One of the key characteristics of digital images with a discrete representation is its pliability to manipulation. Recent trends in the field of unsupervised detection of digital forgery includes several advanced strategies devoted to reveal anomalies just considering several aspects of multimedia content. One of the promising approach, among others, considers the possibility to exploit the statistical distribution of DCT coefficients in order to reveal the irregularities due to the presence of a superimposed signal over the original one (e.g., copy and paste). As recently proved the ratio between the quantization tables used to compress the signal before and after the malicious forgery alter the histograms of the DCT coefficients especially for some basis that are close in terms of frequency content. In this work we analyze in more details the performances of existing approaches evaluating their effectiveness by making use of different input datasets with respect to resolution size, compression ratio and just considering different kind of forgeries (e.g., presence of duplicate regions or images composition). We also present possible post-processing techniques able to manipulate the forged image just to reduce the performance of the current state-of-art solution. Finally we conclude the papers providing future improvements devoted to increase robustness and reliability of forgery detection into DCT domain.
机译:具有离散表示的数字图像的主要特征之一是其对操纵的宽度。近期无监督探测数字伪造领域的趋势包括若干致力于揭示异常的高级策略,即仅考虑多媒体内容的几个方面。其中一个有希望的方法包括利用DCT系数的统计分布的可能性,以揭示由于原始的叠加信号(例如,复制和糊剂)存在叠加信号而导致的不规则性。正如最近在恶意伪造之前和之后使用的量化表之间的量化表之间的比率,特别是对于在频率内容方面接近的某些基础,改变了DCT系数的直方图。在这项工作中,我们更详细地分析现有方法的性能通过利用关于分辨率尺寸,压缩比率的不同输入数据集来评估其有效性,并考虑不同种类的伪造(例如,重复区域或图像组成的存在)。我们还提供了能够操纵伪造图像的可能后处理技术,以降低当前最先进的解决方案的性能。最后,我们得出了提供未来改进的论文,以提高伪造检测到DCT域的鲁棒性和可靠性。

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