Title :
An Evaluation of Popular Copy-Move Forgery Detection Approaches
Author :
Christlein, Vincent ; Riess, Christian ; Jordan, Johannes ; Riess, Corinna ; Angelopoulou, Elli
Author_Institution :
Pattern Recognition Lab., Univ. of Erlangen-Nuremberg, Erlangen, Germany
Abstract :
A copy-move forgery is created by copying and pasting content within the same image, and potentially postprocessing it. In recent years, the detection of copy-move forgeries has become one of the most actively researched topics in blind image forensics. A considerable number of different algorithms have been proposed focusing on different types of postprocessed copies. In this paper, we aim to answer which copy-move forgery detection algorithms and processing steps (e.g., matching, filtering, outlier detection, affine transformation estimation) perform best in various postprocessing scenarios. The focus of our analysis is to evaluate the performance of previously proposed feature sets. We achieve this by casting existing algorithms in a common pipeline. In this paper, we examined the 15 most prominent feature sets. We analyzed the detection performance on a per-image basis and on a per-pixel basis. We created a challenging real-world copy-move dataset, and a software framework for systematic image manipulation. Experiments show, that the keypoint-based features Sift and Surf, as well as the block-based DCT, DWT, KPCA, PCA, and Zernike features perform very well. These feature sets exhibit the best robustness against various noise sources and downsampling, while reliably identifying the copied regions.
Keywords :
computer forensics; discrete cosine transforms; discrete wavelet transforms; feature extraction; image coding; principal component analysis; DWT; KPCA; SIFT keypoint-based features; SURF keypoint-based features; Zernike features; blind image forensics; block-based DCT; content copying; content pasting; copy-move dataset; downsampling; feature sets; noise sources; per-image basis; per-pixel basis; popular copy-move forgery detection approach evaluation; postprocessed copy; software framework; systematic image manipulation; Databases; Feature extraction; Forgery; Noise measurement; Principal component analysis; Benchmark dataset; comparative study; copy- move forgery; image forensics; manipulation detection;
Journal_Title :
Information Forensics and Security, IEEE Transactions on
DOI :
10.1109/TIFS.2012.2218597