Group of Analysis, Security and Systems (GASS), Department of Software Engineering and Artificial Intelligence (DISIA), Faculty of Computer Science and Engineering, Office 431, Universidad Complutense de Madrid (UCM), Calle Profesor José García Santesmases 9, Ciudad Universitaria, 28040 Madrid, Spain.
School of Computing, Office S129A, University of Kent, Cornwallis South Building, Canterbury CT2 7NF, UK.
Sensors (Basel). 2018 Aug 25;18(9):2804. doi: 10.3390/s18092804.
Existence of mobile devices with high performance cameras and powerful image processing applications eases the alteration of digital images for malicious purposes. This work presents a new approach to detect digital image tamper detection technique based on CFA artifacts arising from the differences in the distribution of acquired and interpolated pixels. The experimental evidence supports the capabilities of the proposed method for detecting a broad range of manipulations, e.g., copy-move, resizing, rotation, filtering and colorization. This technique exhibits tampered areas by computing the probability of each pixel of being interpolated and then applying the DCT on small blocks of the probability map. The value of the coefficient for the highest frequency on each block is used to decide whether the analyzed region has been tampered or not. The results shown here were obtained from tests made on a publicly available dataset of tampered images for forensic analysis. Affected zones are clearly highlighted if the method detects CFA inconsistencies. The analysis can be considered successful if the modified zone, or an important part of it, is accurately detected. By analizing a publicly available dataset with images modified with different methods we reach an 86% of accuracy, which provides a good result for a method that does not require previous training.
存在具有高性能摄像头和强大图像处理应用程序的移动设备,使得为恶意目的篡改数字图像变得更加容易。这项工作提出了一种新的数字图像篡改检测技术,该技术基于 CFA 伪影检测,这些伪影是由于采集和插值像素的分布差异引起的。实验证据支持了该方法检测广泛的篡改操作的能力,例如复制-移动、调整大小、旋转、滤波和着色。该技术通过计算每个像素被插值的概率,并对概率图的小块应用 DCT,来检测篡改区域。然后,使用每个块上最高频率的系数值来决定分析区域是否被篡改。这里显示的结果是从用于法医分析的篡改图像公共数据集上的测试中获得的。如果该方法检测到 CFA 不一致,受影响的区域将被清晰地突出显示。如果成功检测到修改区域或其重要部分,则可以认为该分析是成功的。通过分析使用不同方法修改的公共数据集图像,我们达到了 86%的准确率,对于不需要预先训练的方法来说,这是一个很好的结果。