The image tampered detection and restoration using the characteristic values

Ching-Te Wang, Ching-Lin Wang, Lin-Chun Li, Ming-Yuan Hsieh
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Abstract

In this paper, we will use the DC coefficients as the characteristics of image blocks to detect and restore an image via the discrete cosine transformation (DCT). The characteristic values are used to detect the tampered blocks and then recover the blocks. The proposed method focuses on image quality and security of information hiding. In the process of embedding characteristic values, the DC coefficient is reproduced three copies and randomly embedded in the middle and high regions of the frequency domain. In the restoration phase, we extract the characteristic values according to the random number generator and restore accurately the image even though it had been damaged and tampered by the malicious users. Furthermore, our method enhances the image robustness and quality after the image is recovered. Moreover, the proposed method uses the characteristic similarity of neighbor blocks without tampering and averages their values to replace the middle and high frequency coefficients in the blocks. From the experimental results, the image quality of restoration is improved by the embedding characteristic values.
利用特征值对图像进行篡改检测和恢复
在本文中,我们将使用DC系数作为图像块的特征,通过离散余弦变换(DCT)检测和恢复图像。利用特征值检测被篡改的数据块并恢复数据块。该方法注重图像质量和信息隐藏的安全性。在嵌入特征值的过程中,DC系数被复制三次,随机嵌入到频域的中、高区域。在恢复阶段,我们根据随机数生成器提取特征值,即使图像被恶意用户破坏和篡改,也能准确地恢复图像。此外,该方法增强了图像恢复后的鲁棒性和图像质量。此外,该方法利用未篡改的相邻块的特征相似度,取其平均值来替换块中的中高频系数。实验结果表明,通过嵌入特征值,恢复图像的质量得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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