1. Field of the Invention
Embodiments of the invention are directed toward an apparatus and methods for an effective blind, passive, splicing/tampering detection. In particular, various embodiments of the invention relate to apparatus and methods for the use of a natural image model to detect image splicing/tampering where the model is based on statistical features extracted from a given test image and multiple 2-D arrays generated by applying the block discrete cosine transform (DCT) with several different block-sizes to the test images.
2. Description of Background Art
Replacing one or more parts of a host picture with fragment(s) from the same host picture or other pictures is called a photomontage or image tampering. Image tampering may be defined as a malicious manipulation of an image to forge a scene that actually never happened in order to purposely mislead observers of the image.
Image splicing is a simple and commonly used image tampering scheme for the malicious manipulation of images to forge a scene that actually never exists in order to mislead an observer. Image splicing is often a necessary step in image tampering. In image splicing, a new image is formed by cropping and pasting regions from the same or different image sources. Modern digital imaging techniques have made image splicing easier than ever before. Even without post-processing of the image, image splicing detection can hardly be caught by human visual systems. Hence, high probability of detection of image splicing detection is urgently needed to tell if a given image is spliced without any a priori knowledge. That is, image splicing/tampering detection should be blind in nature.
Researchers recently have made efforts on image splicing detection due to the increasing needs of legal forensics. For example, a method on blind splicing detection has been reported in T.-T. Ng, S.-F. Chang, and Q. Sun, “Blind detection of photomontage using higher order statistics,” IEEE International Symposium on Circuits and Systems 2004, Vancouver, BC, Canada, May, 2004. However, the reported results of a 72% success rate for tampering detection over the Columbia Image Splicing Detection Evaluation Dataset are not satisfactory for image splicing/tampering detection.
Another background art approach, utilizing statistical moments of characteristic functions has been reported in Y. Q. Shi, G. Xuan, D. Zou, J. Gao, C. Yang, Z. Zhang, P. Chai, W. Chen, and C. Chen, “Steganalysis based on moments of characteristic functions using wavelet decomposition, prediction-error image, and neural network”, IEEE International Conference on Multimedia & Expo 2005, Amsterdam, Netherlands, July, 2005. In this approach, 78-dimensional (78-D) feature vectors are used for universal steganalysis. The first half of features are generated from the given test image and its 3-level Haar wavelet decomposition. The second half of features are derived from the prediction-error image and its 3-level Haar wavelet decomposition. Considering the image and its prediction-error image as the LL0 (Low-Low 0) subbands, there are 26 subbands totally. The characteristic function (CF) (i.e., the discrete Fourier transform (DFT) of the histogram) of each of these subbands is calculated. The first three moments of these CFs are used to form the 78-D feature vectors. The above-mentioned steganalysis scheme provides good results when attacking data hiding algorithms operating in the spatial domain but further improvement in detection probability performance is desirable.
Based on the above discussed features, a more advanced technology has been developed in C. Chen, Y. Q. Shi, and W. Chen, “Statistical moments based universal steganalysis using JPEG 2-D array and 2-D characteristic function,” IEEE International Conference on Image Processing 2006, Atlanta, Ga., USA, Oct. 8-11, 2006. In this background art method, 390-dimensional (390-D) feature vectors are developed for universal steganalysis. These 390-D features consist of statistical moments derived from both image spatial 2-D array and JPEG 2-D array, formed from the magnitudes of JPEG quantized block discrete cosine transform (DCT) coefficients. In addition to the first order histogram, the second order histogram is also considered and utilized. Consequently, the moments of 2-D CF's are included for steganalysis. Extensive experimental results have shown that this steganalysis method outperforms in general the background art in attacking modern JPEG steganography including OutGuess, F5, and MB1. However, as with the above, further improvements in detection performance is desirable.
In our own background art developments, we have developed a powerful steganalyzer to effectively detect the advanced JPEG steganography in Y. Q. Shi, C. Chen, and W. Chen, “A Markov process based approach to effective attacking JPEG steganography”, Information Hiding Workshop 2006, Old Town Alexandria, Va., USA, Jul. 10-12, 2006. In this work, we first choose to work on the image JPEG 2-D array. Difference JPEG 2-D arrays along horizontal, vertical, and diagonal directions are then used to enhance changes caused by JPEG steganography. Markov processes are then applied to modeling these difference JPEG 2-D arrays so as to utilize the second order statistics for steganalysis. In addition to the utilization of difference JPEG 2-D arrays, a thresholding technique is developed to greatly reduce the dimensionality of transition probability matrices, i.e., the dimensionality of feature vectors, thus making the computational complexity of the proposed scheme manageable. Experimental results have demonstrated that this scheme has outperformed the existing steganalyzers in attacking OutGuess, F5, and MB1 by a significant margin. However, as with the above, further improvement in detection performance is desirable.
From the discussion above, it is clear that image splicing detection is of fundamental importance in the art of image splicing/tampering detection. The blind splicing detection methods of the background art have typically achieved a probability of successful detection rate of 72%-82% against the Columbia Image Splicing Detection Evaluation Dataset. Thus, there is a need in the art for further improvement in image splicing/tampering detection performance with blind methods for authenticating images.
Embodiments of the invention are directed at overcoming the foregoing and other difficulties encountered by the background arts. In particular, embodiments of the invention provide methods for blind splicing/tampering detection based on a natural image model. The methods are based on statistical features extracted from the given image and its multi-block-sized block discrete cosine transform coefficient 2-D arrays and utilizing machine learning to provide excellent splicing detection capability. In embodiments of the invention, splicing detection is a part of a two-class method for pattern recognition. That is, a given image is classified as either a spliced image or a non-spliced (authentic) image. Experimental results that are further discussed below have shown that the embodiments of the invention can greatly outperform background art techniques when applied to the same image database (i.e., the Columbia Image Splicing Detection Evaluation Dataset) with a probability of successful detection rate of 92% over the Columbia Image Splicing Detection Evaluation Dataset.
Further, embodiments of the invention provide improvements in the apparatus and methods for detection of image splicing/tampering that combine features extracted from the spatial representation; and the computation of multiple block discrete cosine transform (MBDCT) with different block sizes. In addition, embodiments of the invention also combine features from the 1-D characteristic function, the 2-D characteristic function, moments and the discrete wavelet transform.
In particular, the spatial representation of the given test image (i.e., an image pixel 2-D array) is input to embodiments of the invention and statistical moments of characteristic functions are extracted from this 2-D array. Further, the block discrete cosine transform (BDCT) is applied, with a set of different block sizes, to the test image, resulting in a group of image BDCT 2-D arrays, also called group BDCT representations, each consisting of all of BDCT coefficients from all of non-overlapping blocks. This group of BDCT 2-D arrays is referred to as multi-size BDCT 2-D arrays, or MBDCT 2-D arrays for short. From these MBDCT 2-D arrays, statistical moments of characteristic functions and Markov process based features are extracted.
One exemplary embodiment of the invention is a method for detecting image tampering comprising: inputting a two-dimensional (2-D) spatial representation of the image; generating non-overlapping, N×N block decompositions of the spatial representation of the image; applying a block discrete cosine transform (BDCT) to each of the non-overlapping, N×N block decompositions; determining BDCT coefficient arrays derived from the coefficients of all non-overlapping, N×N block decompositions; extracting moments of a characteristic function from the spatial representation of the image and each of the BDCT coefficient 2-D arrays; extracting the transition probability from the 8×8 BDCT coefficient 2-D array; generating features based at least on the extracted moments of the characteristic function and the extracted Markov transition probabilities; and classifying the image based at least on the generated features. Preferably, in an exemplary embodiment of the invention: the block size N×N, with N being at least one of 2, 4, and 8 with respect to the Columbia Image Splicing Detection Evaluation Dataset.
Yet another exemplary embodiment of the invention is a processor-readable medium containing software code that, when executed by a processor, causes the processor to implement a method for steganalysis of an image comprising: inputting a two-dimensional (2-D) spatial representation of the image; generating non-overlapping, N×N block decompositions of the spatial representation of the image; applying block discrete cosine transform (BDCT) to each of the non-overlapping, N×N block decompositions; determining BDCT coefficient 2-D arrays for each N×N block; extracting moments of a characteristic function from the spatial representation of the image and each of the BDCT coefficient 2-D arrays; generating features based at least on the extracted moments of the characteristic function; and classifying the image based at least on the generated features.
Yet another exemplary embodiment further comprises: determining a prediction-error 2-D array for at least one of the spatial representation 2-D array, and the BDCT coefficient 2-D arrays; computing a wavelet transform (e.g., DWT) for at least one of the spatial representation 2-D array of the image, and the BDCT coefficient 2-D arrays, and the prediction-error 2-D array; rounding at least one of the spatial representation 2-D array of the image and the BDCT coefficient 2-D arrays; 2-D histogram the rounding function output; determining at least one of horizontal, vertical, diagonal and minor diagonal 2-D histograms from at least one of the spatial representation 2-D array of the image and the BDCT coefficient 2-D arrays; subband processing at least one of the spatial representation 2-D array of the image and the BDCT coefficient 2-D arrays, the prediction error function output, and the 1-level DWT function output; histogramming the outputs of the subband processing functions; applying a discrete Fourier transform (DFT) to the histograms; applying a 2-D DFT to the 2-D histograms; determining at least one of the first order, second order and third order moments from the characteristic function (i.e., with the discrete Fourier transform of the histogram); and determining at least one of the first order, second order and third order marginal moments from the characteristic function; and generating features based at least on the moments.
Preferably, the wavelet transform of the above-discussed exemplary embodiments uses a one-level discrete wavelet transform. Alternatively, two-level and three-level discrete wavelet transforms can be used. In addition, in these exemplary embodiments, the wavelet transform is at least one of a Haar wavelet, Daubechies 9/7 wavelet, integer 5/3 wavelet, and other wavelets.
Another exemplary embodiment of the invention is a method further comprising: computing sign and magnitude for at least one of the spatial representation 2-D array of the image, the BDCT coefficient 2-D arrays and the JPEG coefficient 2-D arrays; computing an expression |a|+|b|−|c|; and determining the product of the expression and the sign.
Yet another embodiment of the invention is an apparatus comprising: means for generating features based at least in part on moments of a characteristic function of said image; and means for classifying said image based at least in part on said generated features. Preferably said means for generating features comprises means for generating features based at least in part on moments of a set of decomposition of images. Preferably said set of decomposition of images is based at least in part on at least one of the discrete wavelet transform or the Haar wavelet transform. Preferably, the means for classifying comprises a means for classifying an image as either a stego-image or a non-stego image. Preferably said means for generating features includes means for generating a prediction error based at least in part on said image.
Another embodiment of the invention is an apparatus comprising: means for applying a trained classifier to an image; and means for classifying said image based at least in part on applying a trained classifier to a host of features generated from said image. Preferably, the means for classifying comprises means for classifying based at least in part on applying a trained classifier comprising at least one of a trained Support Vector Machine (SVM) classifier, a trained neural network classifier and a trained Bayes classifier. Preferably, the means for classifying includes means for classifying based at least in part on a host of features generated from a prediction error of said image.
In the background art of U.S. patent application Ser. No. 11/340,419, a steganalysis scheme utilizing statistical moments of characteristic functions of test image, its prediction-error image, and all of their wavelet subbands has been proposed, in which 78-D feature vectors are used for universal steganalysis. While this implementation performs well when the data is hidden in raw images, this universal steganalyzer does not perform well in attacking modern JPEG steganography such as OutGuess, F5 and model based (MB).
In U.S. patent application Ser. No. 11/331,767 to Shi and Chen, which is incorporated herein by reference, a method for identifying marked images using based at least in part on frequency domain coefficient differences is disclosed. To effectively detect the modern JPEG steganography, a Markov process based steganalyzer will be utilized. The JPEG 2-D array, which is formed from the magnitude of the JPEG coefficient of a given JPEG image, is first formed from the given test image. Difference JPEG 2-D arrays along horizontal, vertical, and diagonal directions are used to enhance changes caused by JPEG steganography. A Markov process is then applied to modeling these difference JPEG 2-D arrays so as to utilize the second-order statistics for steganalysis. Experimental results have demonstrated that this scheme has outperformed the background art in attacking modern JPEG steganography by a significant margin.
In U.S. patent application Ser. No. 11/624,816 to Shi and Chen, which is herein incorporated by reference, an approach to improve the performance of a universal steganalyzer in attacking the modern JPEG steganography and a more advanced universal steganalyzer has been developed. In addition to 78 features proposed above, features from statistical moments derived from the JPEG 2-D array, which is formed from the magnitude of the JPEG coefficient array of a given JPEG image. In addition to the first-order histogram, the second-order histogram is also utilized. That is, the moments of 2-D characteristic functions are included for steganalysis. Extensive experimental results have shown that this universal steganalysis method performs well in attacking the modern JPEG steganographic tools.
The main characteristics of the general natural image model of the embodiments of the invention lie in the following two combinations: (1) the combination of features derived from the image spatial representation and features derived from the MBDCT representations; and (2) the combination of moments of characteristic functions based features and Markov process based features. The experimental results shown later in below indicate that the features generated from the MBDCT 2-D arrays can greatly improve the splicing detection performance.
The BDCT has been widely used in the international image and video compression standards due to its efficiency on decorrelation and energy compaction. For example, 8×8 BDCT has been adopted in JPEG and MPEG-2 (Moving Picture Experts Group) standards. The BDCT is used with a set of different block sizes in this novel natural image model for splicing detection. This is to utilize the comprehensive decorrelation capability of BDCT with various block sizes. The splicing procedure changes the local frequency distribution of the host images. With various block sizes, it is expected that this frequency change can be perceived by BDCT coefficients with different block sizes and hence the splicing operation can be detected with features extracted from these MBDCT 2-D arrays.
In embodiments of the invention, we choose the set of different block sizes N: as 2×2, 4×4, and 8×8 because this choice is of computational benefits in implementing DCT. Our experimental results on the image database below show that, when we include block size 16×16, the performance of the splicing analyzer does not improve much but the computational cost rises. This can be explained as the correlation between image pixels has become rather weak as the distance between pixels is too large. Also note that the image size in this database is only of size 128×128. That is, we have the spatial representation 2-D array, and three BDCT 2-D arrays for each given test image now, from each of which 36 moment features are generated.
Also, as shown in
The moment features are derived from the 1-D characteristic functions (DFT of the first-order histograms), as well as from the 2-D characteristic functions (DFT of second-order histograms. Statistical moments are effective, especially, the second-order histograms that involve two pixels at one time and hence bring out the second-order statistics, and thus improved performance in splicing/tampering detection.
Further,
In particular, Markov features are effective to attack modern JPEG steganography. For JPEG images, Markov features are extracted from the JPEG coefficient 2-D array, which is the result of 8×8 BDCT followed by JPEG quantization. If a given test image is a raw image, there are no JPEG coefficients at all. Embodiments of the invention provide a splicing detection scheme that divides the spatial representation 2-D array into non-overlapping 8×8 blocks first, and then applies the Markov feature extraction procedure to the formulated 8×8 BDCT 2-D array.
Further, the Markov features are also derived from the 8×8 BDCT 2-D array of the given image. Features derived from Markov process along four directions may be used to enhance the steganalyzer's capability. However, features derived from one direction are used in an exemplary embodiment for splicing detection because of the limited number of images in the test image database.
As shown in
The SVM 250 of
In each experiment, randomly selected ⅚ of the authentic images and ⅚ of the spliced images are used to train a SVM classifier. Then the remaining ⅙ of the authentic images and ⅙ of the spliced images are used to test the trained classifier. The receiver operating characteristics (ROC) curve is obtained to demonstrate the detection performance.
The N×N block decompositions of the image data are input to BDCT functions 213, 215, 267. The outputs of the BDCTs 213, 215, 267 provide inputs for BDCT coefficient 2-D arrays 223, 225, 277. The JPEG Quantized coefficient 2-D array 226 and BDCT coefficient 2-D arrays 223, 225, 277 are each provide as inputs for Moment Extraction functions 233, 235, 287. The outputs from the Moment Extraction function 231, 233, 235, 287, 237 are each ultimately 36-D feature vectors 241, 243, 245, 297, 247 and the output of the Markov Feature function 239 is an M×81-Dimensional feature vector 249, each of which forms a part of a final L-Dimensional (L-D) feature vector that is input to a Support Vector Machine (SVM) trainer and classifier 250.
With regards to the decompression function 204 of
The JPEG decompression is a reverse process of the JPEG compression function discussed above. Hence, to form a 2-D array consisting of all of the JPEG quantized BDCT coefficients from all of the 8×8 blocks, as shown in
Considering the high dimensionality of the features leads to high computational complexity, we compute at least a one-level (1-level) discrete wavelet transform (DWT) in an exemplary embodiment of the invention. If we consider the spatial representation of the image, the BDCT coefficient 2-D array, or the JPEG coefficient 2-D array as LL0, we have five subbands for a 1-level DWT decomposition. As compared to a 3-level DWT decomposition, the feature dimensionality of a 1-level DWT is reduced to 38%. The wavelet transform for this embodiment can be, but is not limited to the Haar wavelet transform, which is the simplest wavelet.
The feature vectors used in embodiments of the invention with methods for splicing detection include, but are not limited to: 225-dimensional (225-D). The first 36 features are derived from the given image. These 36 features can be divided into three groups. The first group has 15 features, which consist of moments from the 1-D CF's of the given image and its 1-level Haar wavelet subbands. The second group also has 15 features, which consist of moments generated from the 1-D CF's of the prediction-error image and its 1-level Haar wavelet subbands. The third group has 6 features, which consist of marginal moments from the 2-D CF of the given image. This method is shown in
As described above, the 1-D CF function is the DFT of the 1-D histogram of each subband. Embodiments of the method are based on the moments of the characteristic function (i.e., the Fourier transform of the histogram) of an image. Given H(xi), which is the CF component at frequency xi, and K, which is the total number of different value level of coefficients in a subband under consideration, the absolute moments are defined as follows:
An exemplary block diagram of a method for prediction is shown in
x^=sign(x)·{|a|+|b|−|c|}. (2)
The second-order histogram is a measure of the joint occurrence of pairs of pixels separated by a specified distance and orientation. Denote the distance by ρ and the angle with respect to the horizontal axis by θ. The second-order histogram is defined in Equation (3) as:
where N(j1,j2;ρ,θ) is the number of pixel pairs for which the first pixel value is j1 while the second pixel value is j2, and NT(ρ θ) is the total number of pixel pairs in the image with separation (ρ,θ). The second-order histogram is also called dependency matrix or co-occurrence matrix.
The integrated block diagram of an implementation of the method for feature extraction is shown in
where H(ui,vj) is the 2-D CF component at frequency (ui,vj) and K is the total number of different values of coefficients in a wavelet subband under consideration.
In
With block size N×N, where N is equal to 2, 4, and 8, are chosen accordingly.
After the BDCT, we have a BDCT coefficient 2-D array, which consists of the BDCT coefficients and has the same size as the image. As noted above, we choose block size N equal to 2, 4, and 8, respectively. Three different BDCT coefficient 2-D arrays are consequently obtained. We apply the same method for moment extraction on these three arrays to calculate a 108-dimensional (108-D) feature vector.
Fh(u, v)=F(u, v)−F(u+1, v) (7)
where u∈[0, Su−2], v∈[0, Sv−2], F(u, v) is the absolute BDCT coefficient, and Su, Sv denote the image resolution in the horizontal direction and vertical direction, respectively. The formation of the horizontal difference 2-D array (horizontal difference array in short) is shown in
In embodiments of the invention, a model of the above-defined difference array is developed by using Markov random process. According to the theory of random process, the transition probability matrix can be used to characterize the Markov process. The methods of the invention use the one-step transition probability matrix. In order to reduce computational complexity further, the methods use a thresholding technique. A threshold is chosen as, for example, but not limited to: T=4 in one embodiment. That is, if the value of an element in the horizontal difference array is either larger than 4 or smaller than −4, and will be represented by 4 or −4, respectively. Using these methods result in a transition probability matrix of dimensionality 9×9=81. The elements of the matrix associated with the horizontal difference array, which are used as feature vectors, are given in Equation (8), as:
where m∈{−4, −3, . . . , 0, . . . , 4}, n∈{−4, −3, . . . , 0, . . . , 4}, and Equation (9) is given as:
Embodiments of the invention using a natural image model approach to splicing/tampering detection are to provide splicing detection on the image dataset.
Note that all elements of the transition probability matrix are used as features for splicing detection. The generation of Markov features used in the exemplary block diagram shown in
In implementing the flow diagram of
While embodiments of the invention can be different from case to case according to the actual application situation, the main idea behind the implementation remains the same. Though the above discusses one embodiment of the invention, some possible variations on implementations are summarized in the paragraphs below.
Preferably, not only a test image but also the associated 2-D arrays, generated by applying to the test image the block discrete cosine transform (BDCT) with variable block sizes are utilized for generating features for splicing/tampering detection. The block size can be 2×2, 4×4, 8×8, 16×16, 32×32, depending on the specific application.
Preferably, not only the above-mentioned test image and the associated 2-D arrays but also their respective prediction-error 2-D arrays (i.e., a digital image is also a 2-D array) are used for generating features for splicing/tampering detection. One of the prediction methods is described in Equation 3. Other types of prediction methods that may be used include, but are not limited to the prediction methods used in Y. Q. Shi, G. Xuan, D. Zou, J. Gao, C. Yang, Z. Zhang, P. Chai, W. Chen, and C. Chen, “Steganalysis based on moments of characteristic functions using wavelet decomposition, prediction-error image, and neural network”, IEEE International Conference on Multimedia & Expo 2005, Amsterdam, Netherlands, July, 2005.
Preferably, for the 2-D arrays (i.e., image, or BDCT 2-D array, or prediction-error image, or prediction-error BDCT 2-D array), wavelet decomposition is carried out. All subbands, including the LL subbands are used to generate statistical features. In addition, preferably, not only Haar wavelet transform but also other wavelet discrete wavelet transforms are applicable.
Preferably, the 2-D arrays, described above can be denoted by the LL0. Statistical moments are generated from all of the LL0 subbands as well. In addition, instead of generating statistical moments directly from the subbands, the moments may be generated from characteristic functions of these subbands.
Preferably, the 2-D histogram is generated from the rounded 2-D array. In addition, the separation of second-order histogram: we use (ρ,θ)=(1,0) in this implementation. Other separations of four second-order histograms (also referred to as 2-D histograms) are generated with the following four possible separations:
with the parameters ρ representing the distance between the pair of elements for which the two-dimensional histogram is considered, and θ representing the angle of the line linking these two elements with respect to the horizontal direction; which are called horizontal 2-D histogram, vertical 2-D histogram, diagonal 2-D histogram, and minor diagonal 2-D histogram, respectively.
Preferably, the 2-D characteristic function is generated by applying discrete Fourier transform (DFT) to 2-D histogram. Some marginal moments are generated as features. In addition, preferably absolute moments as defined in Equations (1) and (4) are generated. Further, although only the first three order moments are used in our implementation, using more than the first three order moments is possible if it brings advantage in application and if the computational complexity manageable.
Preferably, the difference 2-D array is generated from a 2-D array after the rounding operation and the operation of taking absolute value (magnitude) have been applied to the 2-D array. In addition, although only the horizontal difference 2-D array is used in this implementation, other choices such as vertical, main-diagonal, and minor-diagonal difference 2-D arrays can also be used. Or, more than one type difference 2-D arrays are used in one implementation for some applications. Further, preferably, for difference 2-D array, the Markov process is applied.
Preferably, although one-step Markov process is applied in the implement horizontally, the other directions are feasible, e.g., vertically, main-diagonally, and minor-diagonally. In addition, two-step and three-step Markov processes may be applied for some applications. Further, the probability transition matrix is formed to characterize the Markov process.
Preferably, a thresholding technique is used to reduce the dimensionality of the matrix. Further, although the threshold T used in this implementation is selected as T=4 according to a statistical analysis similar to that reported in Y. Q. Shi, C. Chen, and W. Chen, “A Markov process based approach to effective attacking JPEG steganography”, Information Hiding Workshop 2006, Old Town Alexandria, Va., USA, Jul. 10-12, 2006, different threshold T values may be considered. This may improve the detection rate for splicing/tampering detection. However, doing so will result in larger feature dimensionality and thus more computational cost, in particular, in the classifier's training stage. For example, if we use T=5 instead of T=4 in forming probability transition matrix to characterize Markov process in this implementation, the Markov process based feature dimensionality will be 121 instead of 81. Moreover, larger dimensionality needs larger image dataset. In our experiment results given below, we have only 1845 images in the image dataset. Therefore, we use T=4 in this reported implementation.
Preferably, all entries in the truncated transition probability matrix are used as part of features. Further, with respect to classification, the support vector machine (SVM) is used in this work as classifier, which has four basic kernels: linear, polynomial, radial basis function (RBF), and sigmoid. In addition, the RBF kernel is used.
In the above discussion, it is assumed that the input test image is in general format, say, the bitmap (BMP). If the input test image is given in JPEG format, then the 8×8 BDCT is not required to apply to each of the non-overlapping 8×8 blocks to generate an 8×8 BDCT 2-D array. Instead, the procedure can directly work on the so-called JPEG 2-D array (i.e., the JPEG file is decoded to have all of the quantized 8×8 block DCT coefficients available. Then, these coefficients in the same arrangement as when the JPEG compression is carried out are used to form a 2-D array, whose size is the same as the original image size.) To generate the BDCT 2-D arrays with other block sizes, such as 2×2, 4×4, and 16×16, we first decompress the JPEG file into an image in spatial domain, then apply the BDCT with these block size to generate these 2-D arrays.
The image dataset used to produce our experimental results is the Columbia Image Splicing Detection Evaluation Dataset is by courtesy of DVMM, Columbia University. This data set is created by DVMM, Columbia University for benchmarking the blind passive image splicing detection algorithms. Content diversity, source diversity, balanced distribution, and realistic operation are emphasized while this image data set is created. There are five image block types for the authentic and the spliced classes in this data set, i.e., image with an entirely homogeneous textured region, image with an entirely homogeneous smooth region, image with an object boundary between a textured region and a smooth region, image with an object boundary between two textured regions, and image with an object boundary between two smooth regions, respectively. Two kinds of splicing techniques are used: arbitrary-object-shaped splicing and straight line splicing. Moreover, to ensure that sufficiently accurate statistical data can be extracted from each image, all these images are provided of the same size 128×128. It is a data set open for downloading. There are 933 authentic and 912 spliced images in this data set.
To evaluate the effectiveness of our proposed scheme, we generate a 225-D feature vector using the implementation of feature extraction described above for each authentic and each spliced image. In each experiment, randomly selected ⅚ of the authentic images and ⅚ of the spliced images are used to train a SVM classifier. Then the remaining ⅙ of the authentic images and ⅙ of the spliced images are used to test the trained classifier.
The receiver operating characteristic (ROC) curve for embodiments of the invention is shown in
The averaged detection rates and AUC are also given in Table 1. Compared to the background art, which achieve a detection accuracy of 72%, 80%, and 82%, respectively, the implementation of the proposed approach has made a significant advancement in splicing detection.
In addition, experimental results with reduced feature space were tested. That is, we also implemented experiments with reduced dimensionality of feature vectors in order to examine the contributions made by moment features and Markov features independently. The results are shown in
It can be seen from
An additional feature of embodiments of the invention is the demonstration of the effect of Mult-size BDCT (MBDCT), which we call the “rake transform.” Features are derived from statistical moments are of dimensionality 144-D. The first 36 feature components are derived from the spatial representation. The second, third, and fourth are derived from BDCT representation with block size 2×2, 4×4, and 8×8, respectively. Experimental results using part of and all of these features are given in Table 3. In this table, “36-D” means only the first 36 feature components (from the spatial representation) are used, “72-D” means the first and the second 36 feature components (from the 2×2 BDCT) are used, and so on.
The MBDCT is powerful in modeling images. It functions like rake receivers widely used in wireless communications, where each reflected signal contributes to the rake receiver to improve the SNR (signal to noise ratio) of the received signal. Here, each block DCT 2-D array with a block size contributes to splicing detection. Collectively, the MBDCT raises capability of splicing detection greatly.
It is observed from these results that each of the BDCT's makes a contribution to the splicing analyzer. Moreover, the more the BDCT (up to 8×8) are included, the better the detection performance.
The choice of block size in Multi-size BDCT is further explored in the following. The features of statistical moments are derived from the image pixel 2-D array, and the MBDCT 2-D arrays. Specifically, in the implementation of MBDCT, we only use block sizes: 2×2, 4×4, and 8×8. In the experimental results given in Table 4, a performance comparison of current implementation (i.e., 225-D features) with an implementation including 16×16 BDCT (thus 261-D features) is made. From Table 4 we can see that the performance of the splicing analyzer is not enhanced with features derived from 16×16 BDCT, although the feature size has increased.
The choice of the threshold T is further explored in the following. In particular, the choice of the threshold T is used to reduce the Markov features' dimensionality. To select an appropriate T, the following points should be taken into consideration. The T cannot be too small. With a too small T, some information of the elements of the transition probability matrix will be lost. On the other hand, T cannot be too large. With a too large T, the existence of T is meaningless.
In Table 5, we give the performances of Markov features with three different T. i.e., T=3, 4, and 5, respectively. From this table, we can see that the performances of these three choices are comparable. T=4 is the best choice which balances the computational cost and detection rates.
In view of the experimental results, the embodiments of the invention overwhelmingly outperform the background arts in splicing detection by a significant margin. The method of feature generation process can be summarized as follows: (1) Both the test image and the corresponding prediction-error image are used; (2) Both the image and the corresponding multi-block-sized block discrete cosine transform coefficient 2-D array are used; (3) Both the image/BDCT coefficient 2-D array/their prediction-error and their wavelet subbands are used; (4) Both the moments of the CF of the 1-D histogram and the marginal moments of the CF of the 2-D histogram are used; (5) Both the first order statistical features (moments of the CF of the 1-D histogram) and the second order statistical features (marginal moments of the CF of the 2-D histogram and the transition probability matrix elements used to characterize the Markov process) are used; and (6) Considering the balance of splicing detection capability, computational complexity, and image dataset used in our experiment, we implement our scheme with 225-D features.
In order to improve the performance of methods for image tampering detection, one embodiment of the invention computes moments generated from BDCT representations with different block size to enhance the detection capability. In particular, embodiments of the invention exploit the concept that the moments of the CF of the histogram of the BDCT coefficient 2-D arrays decreases or remains the same after noise information due to splicing under the assumption that the splicing/tampering information is additive to and independent of the cover image, and with such a distribution, the magnitude of the CF of the transformed embedded signal is non-increasing from 1 to N/2 (where N is the total number of different value levels of BDCT coefficients). In addition, the moments of 2-D characteristic functions may also be included to further enhance the splicing/tampering detection capability.
It will, of course, be understood that, although particular embodiments have just been described, the claimed subject matter is not limited in scope to a particular embodiment or implementation. For example, one embodiment may be in hardware, such as implemented to operate on a device or combination of devices, for example, whereas another embodiment may be in software. Likewise, an embodiment may be implemented in firmware, or as any combination of hardware, software, and/or firmware, for example. Likewise, although claimed subject matter is not limited in scope in this respect, one embodiment may comprise one or more articles, such as a storage medium or storage media. This storage media, such as, one or more CD-ROMs and/or disks, for example, may have stored thereon instructions, that when executed by a system, such as a computer system, computing platform, or other system, for example, may result in an embodiment of a method in accordance with claimed subject matter being executed, such as one of the embodiments previously described, for example. As one potential example, a computing platform may include one or more processing units or processors, one or more input/output devices, such as a display, a keyboard and/or a mouse, and/or one or more memories, such as static random access memory, dynamic random access memory, flash memory, and/or a hard drive. For example, a display may be employed to display one or more queries, such as those that may be interrelated, and or one or more tree expressions, although, again, claimed subject matter is not limited in scope to this example.
In the preceding description, various aspects of claimed subject matter have been described. For purposes of explanation, specific numbers, systems and/or configurations were set forth to provide a thorough understanding of claimed subject matter. However, it should be apparent to one skilled in the art having the benefit of this disclosure that claimed subject matter may be practiced without the specific details. In other instances, well known features were omitted and/or simplified so as not to obscure the claimed subject matter. While certain features have been illustrated and/or described herein, many modifications, substitutions, changes and/or equivalents will now occur to those skilled in the art. It is, therefore, to be understood that the appended claims are intended to cover all such modifications and/or changes as fall within the true spirit of claimed subject matter.
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