一种改进的JPEG图像取证双压缩检测方法

V. Thing, Yu Chen, C. Cheh
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引用次数: 27

摘要

双JPEG图像压缩检测,或者更确切地说是双量化检测,是检测图像伪造或篡改的一种重要的数字图像取证方法。本文提出了一种改进的双量化检测方法,以提高JPEG图像篡改检测的精度。我们使用公开的CASIA真实和篡改图像数据集9501张JPEG图像来评估我们的检测方法。我们进行了20轮实验,对我们的检测方法进行了严格的参数设置,以证明其鲁棒性。每轮分类器由篡改图像的1/20和真实图像的1/72组成的一个唯一的、不重叠的小子集生成,得到每类约100张图像的训练数据集,其余的篡改图像的19/20和真实图像的71/72用于测试。通过实验,我们发现与目前最先进的方法相比,该方法的真阴性(TN)率和真阳性(TP)率分别平均提高了40.31%和44.85%。采用我们的检测方法进行的20轮实验中,TN和TP的平均率分别为90.81%和76.95%。实验结果表明,本文提出的JPEG图像取证方法能够支持可靠的大规模数字图像证据真实性验证,且具有较好的一致性和准确性。较低的训练数据与测试数据之比也表明,即使在相对有限或较小的训练数据集可用的情况下,我们的方法在实际应用中也是鲁棒的。
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An Improved Double Compression Detection Method for JPEG Image Forensics
Double JPEG image compression detection, or more specifically, double quantization detection, is an important digital image forensic method to detect the presence of image forgery or tampering. In this paper, we introduce an improved double quantization detection method to improve the accuracy of JPEG image tampering detection. We evaluate our detection method using the publicly available CASIA authentic and tampered image data set of 9501 JPEG images. We carry out 20 rounds of experiments with stringent parameter setting placed on our detection method to demonstrate its robustness. Each round of classifier is generated from a unique, non-overlapping and small subset composing of 1/20 of the tampered and 1/72 of the authentic images, to obtain a training data set of about 100 images per class, with the rest of the 19/20 of the tampered and 71/72 of the authentic images used for testing. Through the experiments, we show an average improvement of 40.31% and 44.85% in the true negative (TN) rate and true positive (TP) rate, respectively, when compared with the current state-of-the-art method. The average TN and TP rates obtained from 20 rounds of experiments carried out using our detection method, are 90.81% and 76.95%, respectively. The experimental results show that our JPEG image forensics method can support a reliable large-scale digital image evidence authenticity verification with consistent good accuracy. The low training to testing data ratio also indicates that our method is robust in practical applications even with a relatively limited or small training data set available.
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