Lai Yuecong, Huang Tianqiang, Jiang Renxiang. Image region copy-move forgery detection based on Exponential-Fourier moments[J]. Journal of Image and Graphics, 2015, 20(9): 1212-1221. DOI: 10.11834/jig.20150908.
An image can be easily tampered given the development of digital imaging technologies nowadays. Copy-move forgery is one of the most commonly and easily used tampering techniques. To make the tampered image look normal
the copied region may be subjected to various post-processing operations. However
most existing methods for detecting altered regions are too sensitive to the post-processing operations. As most existing copy-move forgery detection algorithms are weak
a detection algorithm based on exponential Fourier moments is proposed in this paper. First
a grayscale image is divided into multiple overlapping blocks. Then
the exponential Fourier moments of every block will be regard as a feature vector
and all vectors are sorted by lexicographic sorting. The questionable blocks are selected based on vector similarity and block displacement. Finally
the error similar blocks are removed by the neighbors' number and the angles' variance to locate the final tampered region. If an RGB image is detected
then each color channel can be independently processed to obtain three results
and the final result is obtained by performing an “and” operation. Most existing copy-move forgery detection methods usually convert an RGB image into a grayscale image
thereby leading to information loss. As a result
we detect each color channel to have three independent outcomes and integrate the different results. To make the method more robust
we use the consistency of the pasted region to remove error similar blocks. Experimental results show that the method is robust against post-processing operations
such as rotation
noise addition
and Gaussian blur. Compared with the method that uses radial harmonic Fourier moments
our proposed method has a better efficiency when the noise is added to the image. The detection rate increased by about 26.66%
and the error rate decreased by about 33.77%. A user can easily creative a convincing image by copying and pasting content within the same image. The proposed method can detect and locate the duplicated regions. Moreover
the method is still effective even when an image is distorted by rotation