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An Multiple Regression Analysis Based Color Transform Between Objects. Speaker : Chen-Chung Liu. Outline. Introduction The proposed algorithm Color Objects Extraction Algorithm Using Multiple Thresholds (COEMT) Color Transform Using Multiple Regression Analysis (MRA) Conclusions.
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An Multiple Regression Analysis Based Color Transform Between Objects Speaker:Chen-Chung Liu
Outline • Introduction • The proposed algorithm • Color Objects Extraction Algorithm Using Multiple Thresholds (COEMT) • Color Transform Using Multiple Regression Analysis (MRA) • Conclusions
1. Introduction(1/3) • Art purpose
1. Introduction (2/3) • Image analysis (details increasing)
1. Introduction (3/3) • Image analysis (image simplify)
The proposed algorithm Figure 1. The flow chart of the proposed color transformation algorithm.
2.1.Color Objects Extraction(1/17) Figure 2. Color objects extraction algorithm flow chart.
Figure 3. Pixels values distribution on different planes. 2.1.Color Objects Extraction (2/17)
2.1.Color Objects Extraction (3/17) Figure 4. Intensity versus RGB and saturation versus RGB.
2.1.Color Objects Extraction (4/17) Figure 5. The flow chart of EOAFF on HSI domain.
2.1.Color Objects Extraction(9/17) • Filter’s thresholds of hue , saturation , and intensity
2.1.Color Objects Extraction(10/17) Figure 6. An example of the proposed adaptive forecasting filter‘s working.
2.1.Color Objects Extraction(11/17) union result original image CS result BSE result Figure 7. An example of the proposed scheme.
2.1.Color Objects Extraction(12/17) original imagewith seeds DTS in RGB DTS in HSI proposed scheme Figure 8. Test image: Pink hat. C. C. Liu and G. N. Hu, Color Objects Extraction Scheme Using Dynamic Thresholds (DTS), 2009 Workshop on Consumer Electronics (WCE2009), pp. 1130-1138, 2009.
2.1.Color Objects Extraction(13/17) original imagewith seeds DTS in RGB DTS in HSI proposed scheme Figure 9. Test image: Flowers.
2.1.Color Objects Extraction(14/17) original image with seeds DTS in RGB DTS in HSI proposed scheme Figure 10. Test image: Pottery.
2.1.Color Objects Extraction(15/17) original image with seeds DTS in RGB DTS in HSI proposed scheme Figure 11. Test image: Cup set.
2.1.Color Objects Extraction(16/17) DTS in RGB original image with seeds DTS in HSI proposed scheme Figure 12. Test image: Sun flower.
2.1.Color Objects Extraction(17/17) Table 1. Comparisons of extraction results
2.2. MRA_based Color Transform(1/20) Multiple Regression Analysis (1/5) For data of ordered pairs We want to predict y from x by finding a function that fits the data as closely as possible.
2.2. MRA_based Color Transform(2/20) Multiple Regression Analysis (2/5) • MRA is used to find a polynomial function of degree , as the predicting function, that has the minimum of the sum of squares of the errors(SSE) between the predicted values of y and the observed values for all of the n data points .
2.2. MRA_based Color Transform(3/20) Multiple Regression Analysis (3/5) • The values of , , ,…,and that minimizeare obtained by setting the first partial derivatives , ,…, andequal to zero.
2.2. MRA_based Color Transform(4/20) Multiple Regression Analysis (4/5) • Solving the resulting simultaneous linear system of the so-called normal equations:
2.2. MRA_based Color Transform(5/20) Multiple Regression Analysis (5/5) • The matrix form solution bewhere
2.2. MRA_based Color Transform(6/20) Figure 13. Target object .
2.2. MRA_based Color Transform(7/20) Figure 14. Source object .
2.2. MRA_based Color Transform(8/20) • Best fitting functions Red Green Blue Figure 15. The curves of degree1, 5, and 9 best fitting functions.
2.2. MRA_based Color Transform(9/20) Figure 16. The color transfer results corresponding to the variation in the degree of best fitting polynomials.
2.2. MRA_based Color Transform(10/20) L* a* b* Figure 17. The box-plots of L*, a*, and b* for the target, source, and color transferred objects in Figure 11.
2.2. MRA_based Color Transform(11/20) Table 2. The measurement metrics for the target, source and color transferred objects in Figure 17 (1/2)
2.2. MRA_based Color Transform(12/20) Table 2. The measurement metrics for the target, source and color transferred objects in Figure 17 (2/2)
2.2. MRA_based Color Transform(13/20) • The target RGB color image is a girl in a blue dress (350×350 pixels). • The source color images with different sizes.
2.2. MRA_based Color Transform(14/20) • The extraction procedure lasted between 3 and 25 seconds, and the color transferring procedure lasted about 0.03 seconds.
2.2. MRA_based Color Transform(15/20) Figure 20. Examples of color transferring between objects with the proposed multiple regression analysis algorithm (1/2).
2.2. MRA_based Color Transform(16/20) Figure 21. Examples of color transferring between objects with the proposed multiple regression analysis algorithm (2/2).
2.2. MRA_based Color Transform(17/20) • Performance measures function:
2.2. MRA_based Color Transform(18/20) Table 3. The measurement metrics for the target and source objects in Figures 20,21
2.2. MRA_based Color Transform(19/20) Table 4. The measurement metrics for the color transferred target objects in Figures 20, 21
2.2. MRA_based Color Transform(20/20) Table 5. The absolute difference in measurement metrics of the transferred target-object from the source object in Figures 20 and 21
Conclusions • Simple, effective and accurate in color transferring between objects. • Details of target object can be changed by the color complexity of source object. • Time consumption is independent of the number of bins selected and the degree of regression. • Dynamic ranges of colors of objects don’t have any restriction.
Thank You Questions and Comments