典型平滑滤波的数字图像被动取证
doi: 10.3724/SP.J.1146.2013.00131
Smoothing Filtering Detection for Digital Image Forensics
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摘要: 数字图像被动取证技术是国际上正在兴起的一个研究领域,它在不需要其它辅助信息的条件下,仅根据接收到的数字图像,即可实现对图像资源的真实性和完整性验证。针对数字图像处理和编辑篡改中常用的一种处理模式平滑滤波,该文设计了一种基于频域残差的图像滤波检测算法。首先,在检测端对待测图像进行低通滤波,获取并分析其频域残差特性;其次,将频域残差转换到归一化的Radon域;最后,对Radon变换曲线建模,将模型参数作为滤波检测的分类特征。实验结果表明,该算法对3种典型的空域滤波模板高斯模板、均值模板、中值模板,均有较好的检测效果,并能对模板的尺寸做出判断,弥补了前人研究的不足。Abstract: In the past few years, as a type of image authentication technique without relying on pre-registration or pre-embedded information, the passive blind image forensics has become a hot issue in the field of information security techniques. In this paper, a novel algorithm for detecting smoothing filtering in digital images is proposed based on the frequency residual. The suspected image is re-filtered with a Gaussian low-pass filter, and the difference between the initial image and the re-filtered image in Fourier domain is called the frequency residual. Then, the frequency residual is projected into the Radon space with an adaptation of Radon transform. The obtained data is modeled as Fourier series and the model parameters are adopted as features for filtering detection. The experimental results show that the proposed algorithm can not only detect three typical smoothing spatial filters, including Gaussian filter, average filter, and median filter, but also can predict parameters of these filters to complement the existing state-of-the-art methods.
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Key words:
- Digital image forensics /
- Smoothing filtering /
- Radon transform
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