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1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department of Electrical Engineering, Shanghai Jiaotong University 2 School of Information Security, Shanghai Jiaotong University
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Page 1: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

1/18

New Feature Presentation of Transition Probability Matrix for Image Tampering Detection

Luyi Chen1 Shilin Wang2 Shenghong Li1 Jianhua Li1

1Department of Electrical Engineering, Shanghai Jiaotong University2School of Information Security, Shanghai Jiaotong University

Page 2: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

2/18

Outline

Markov Transition ProbabilitySecond order statistics and Feature

ExtractionDimension and correlation between variables

New Form of the featureTwo elements and three elements

Experiment Result Conclusion

Page 3: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

3/18

Context

Inspired by applying Markov Transition Probability Matrix to solve Image Tampering Detection as a two-class classification (proposed by Shi et al 07)

Current feature extraction method Every element from 2D matrix (huge dimension) Boosting selection or PCA for dimension reduction,

and the low dimensional features do not have corresponding physical meaning

Goal: dimension reduction by decomposing adjacent elements to be statistically uncorrelated

Page 4: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

4/18

Second Order Statistical Modeling of Image Image transformed

with 8x8 BDCT Horizontal difference

array Modeled with

horizontal transition probability

Can be applied to four directions

Xij : BDCT Coefficeints

Yij Yi,j+1 Difference array

Transition Probability

Page 5: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

5/18

Feature Extraction of Transition Probability Matrix Thresholding is applied to

difference array (with threshold of T)

The transition probability matrix is used as the feature

Dimension of the feature is (2T+1)2

If we consider four directional transition, the dimension needs to be multiplied by 4.

4, 4 4, 3 4,3 4,4

3, 4 3, 3 3,3 3,4

3, 4 3, 3 3,3 3,4

4, 4 4, 3 4,3 4,4

P P P P

P P P P

P P P P

P P P P

Page 6: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

6/18

Example: Transition Probability Matrix

12

34

56

78

9

-4-3

-2-1

01

23

4

0

0.2

0.4

0.6

0.8

Page 7: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

7/18

Problem of Current Presentation of the Feature Dimension of the

feature is square proportional to the threshold

2 3 4 5 6 70

50

100

150

200

250

threshold of difference element

dim

ensi

on o

f fe

atur

e

Page 8: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

8/18

Correlation Between Adjacent Elements in Difference Array Assume adjacent

BDCT coefficients are uncorrelated, i.e.,

Xij : BDCT Coefficeints

Yij Yi,j+1 Difference array

Transition Probability

,, 2

[( )( )]( , )

0.5 (k=1)

0 (k>1)

ij i k jij i k j

y

E y y y yy y

,( ) 0 ( 1,2,... 1)ij i k jE x x k N

Page 9: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

9/18

Correlation Calculated on Dataset

Figure . Correlation between adjacent elements on difference array of block DCT coefficients: (1) k=1; (2) k=2

Page 10: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

10/18

PCA Transform of Two-component Random Parameters Correlation Matrix Eigenvectors

1

1

1

2

1

1

1 2

1 1

2 2

1 1

2 2

Uncorrelated new random variables

11 2

1,2

T ij

i j

yz

yz

Eigenvalues

Page 11: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

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Decomposition of Second Order Statistics into Marginal Ones Marginal histograms

are output of two linear filters

1 2 3 4 5 6 7 8 9-4-3-2-101234

0

0.5

1

-4 -3 -2 -1 0 1 2 3 40

0.1

0.2

0.3

0.4sum histogram

-4 -3 -2 -1 0 1 2 3 40

0.1

0.2

0.3

0.4difference histogram

11,

2,

21,

1, 2,

2

ij ij i j

ij i j

ij ij i j

ij i j i j

z y y

x x

z y y

x x x

Page 12: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

12/18

Feature Dimension Linearly Proportional to Threshold

2 3 4 5 6 70

50

100

150

200

250

Threshold

Fea

ture

Dim

ensi

on

Transition Probability Matrix

Our new form

Page 13: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

13/18

The Approach Can be Generalized to Three Elements Correlation Matrix Eigenvectors

1 0

1

0 1

Eigenvalues

1

2

3

1

1 2

1 2

1 2 3

1 112 2

21 1

0 2 2

11 1

22 2

Decomposed variables

1

2 1 2 3 1,

3 2,

ijT

i j

i j

z y

z y

z y

Page 14: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

14/18

Dataset and Classifier

Columbia Splicing Detection Evaluation Dataset

921 authentic, 910 spliced

2/3 Training, 1/3 Test LibSVM, Gaussian

RBF kernel

Page 15: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

15/18

Single Feature Performance

Type of Joint Statistics Feature Dimension Accuracy

2 elements

1st order Markov Transition Probability

81 87.09 (1.39)

Our new form (Sec. 3.1) 46 87.97 (1.45)

3 elements

2nd order Markov Transition Probability

729 85.84 (0.92)

Our new form (Sec. 3.2) 77 85.54 (1.34)

Page 16: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

16/18

Combined Features Performance

Feature T Dimension Accuracy

Moment+Transition Probability Matrix

3 266 89.86 (1.02)

Moment+New Form

3 220 89.62 (0.91)

4 236 89.78 (1.03)

5 252 89.78 (1.09)

Page 17: 1/18 New Feature Presentation of Transition Probability Matrix for Image Tampering Detection Luyi Chen 1 Shilin Wang 2 Shenghong Li 1 Jianhua Li 1 1 Department.

17/18

Computation Complexity Comparison

Feature Type Computing Time (seconds)

Transition Probability Matrix 0.0516 (0.0054)

Marginal Distribution of two new variables

0.0502 (0.0005)

On Core 2 Duo 1.6G, 3G Ram

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18/18

Conclusion

Our new form has lower feature dimension, faster computation, and almost as good performance

Dimension Reduction is more obvious in higher order, but further research is needed to improve discrimination performance


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