A Novel Adaptive Fractional Differential Active Contour Image Segmentation Method
Abstract
:1. Introduction
- According to the gradient information of the image, an adaptively changing order matrix is constructed, and the fractional order of each pixel of the image is adaptively changed. Different differential orders are used in the edge texture and smooth area of the image, which preserves richer image information.
- A fractional-order edge-stopping function is proposed, which can effectively improve the performance of the segmentation of noisy images. It solves the problem that the traditional edge-stopping function is trapped in a local minimum due to the influence of noise points.
- The fitting term is designed by combining adaptive fractional differential and Gaussian kernel function, which makes the new method effectively overcome the problem of sensitivity to the initial contour position.
2. Active Contour Classic Model
2.1. Distance Regularized Level Set Evolution (DRLSE) Model
2.2. Region Scalable Fitting (RSF) Model
3. Adaptive Fractional Differential
3.1. Fractional Differential
3.2. Adaptive Fractional Differential
3.3. Fractional Edge-Stopping Function
4. Image Segmentation Based on Adaptive Fractional Differentiation
4.1. Penalty Term
4.2. Regularization Term
4.3. Fitting Term
4.4. Implementation and Algorithm
Algorithm The algorithm for solving the proposed model |
Input:. |
Output: Image segmentation results. |
1: Set initialization parameters: ; |
2: by Equation (16); |
3: for do |
4: by Equation (20); |
5: by Equation (23); |
6: Calculate the fitting term energy function by Equation (25); |
7: of the total energy function by Equation (30); |
8: Update the level set function by Equation (32); |
9: if then |
10: break; |
11: end if |
12: end for |
5. Experimental Results
5.1. Verify the Robustness of Noise
5.2. Initial Contour Position Robustness Verification
5.3. Comparison between Fixed Order and Adaptive Differential
5.4. Compare with Other Methods
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Noise Image | Performance Index | Models | ||||
---|---|---|---|---|---|---|
CV | RSF | Ref. [39] | Ref. [40] | Ours | ||
Clear | IOU | 0.9146 | 0.9033 | 0.8153 | 0.7104 | 0.9856 |
DSC | 0.9368 | 0.9492 | 0.8983 | 0.8307 | 0.9927 | |
Gaussian | IOU | 0.9183 | 0.8678 | 0.7540 | 0.8109 | 0.9814 |
DSC | 0.9335 | 0.9292 | 0.8598 | 0.8955 | 0.9898 | |
Speckle | IOU | 0.9276 | 0.7696 | 0.8058 | 0.7125 | 0.9714 |
DSC | 0.9431 | 0.8698 | 0.8925 | 0.8321 | 0.9898 | |
Gaussian + Speckle | IOU | 0.9222 | 0.7813 | 0.7428 | 0.7310 | 0.9687 |
DSC | 0.9402 | 0.8772 | 0.8524 | 0.8446 | 0.9930 |
Image | Performance Index | Models | ||
---|---|---|---|---|
General Derivative | Fixed Order | Adaptive Order | ||
Pic1 | IOU | 0.9881 | 0.9798 | 0.9896 |
DSC | 0.9940 | 0.9898 | 0.9948 | |
Pic2 | IOU | 0.9792 | 0.9722 | 0.9846 |
DSC | 0.9895 | 0.9859 | 0.9923 | |
Pic3 | IOU | 0.8465 | 0.8200 | 0.9760 |
DSC | 0.9169 | 0.9001 | 0.9878 | |
Pic4 | IOU | 0.9532 | 0.9680 | 0.9748 |
DSC | 0.9760 | 0.9838 | 0.9900 | |
Pic5 | IOU | 0.9688 | 0.7847 | 0.9760 |
DSC | 0.9842 | 0.8794 | 0.9878 |
Image | Performance Index | Models | ||||
---|---|---|---|---|---|---|
CV | RSF | Ref. [39] | Ref. [40] | Ours | ||
Pic6 | IOU | 0.8781 | 0.9059 | 0.7293 | 0.5759 | 0.9832 |
DSC | 0.9351 | 0.9506 | 0.8435 | 0.7309 | 0.9915 | |
Pic7 | IOU | 0.6245 | 0.5139 | 0.4482 | 0.3717 | 0.7101 |
DSC | 0.7689 | 0.6789 | 0.6190 | 0.5420 | 0.8579 | |
Pic8 | IOU | 0.9331 | 0.6589 | 0.6410 | 0.5809 | 0.9510 |
DSC | 0.9654 | 0.7944 | 0.7812 | 0.7349 | 0.9749 | |
Pic9 | IOU | 0.8125 | 0.8647 | 0.8309 | 0.8256 | 0.9929 |
DSC | 0.8966 | 0.9275 | 0.9077 | 0.9045 | 0.9965 | |
Pic10 | IOU | 0.7527 | 0.6988 | 0.7135 | 0.6666 | 0.9539 |
DSC | 0.8589 | 0.8227 | 0.8328 | 0.7999 | 0.9764 |
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Zhang, Y.; Yang, L.; Li, Y. A Novel Adaptive Fractional Differential Active Contour Image Segmentation Method. Fractal Fract. 2022, 6, 579. https://doi.org/10.3390/fractalfract6100579
Zhang Y, Yang L, Li Y. A Novel Adaptive Fractional Differential Active Contour Image Segmentation Method. Fractal and Fractional. 2022; 6(10):579. https://doi.org/10.3390/fractalfract6100579
Chicago/Turabian StyleZhang, Yanzhu, Lijun Yang, and Yan Li. 2022. "A Novel Adaptive Fractional Differential Active Contour Image Segmentation Method" Fractal and Fractional 6, no. 10: 579. https://doi.org/10.3390/fractalfract6100579
APA StyleZhang, Y., Yang, L., & Li, Y. (2022). A Novel Adaptive Fractional Differential Active Contour Image Segmentation Method. Fractal and Fractional, 6(10), 579. https://doi.org/10.3390/fractalfract6100579