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A Darwinian Differential Evolution Algorithm for Multilevel Image Thresholding
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Image segmentation is a prime operation to understand the content of images. Multilevel thresholding is applied in image segmentation because of its speed and accuracy. In this paper, a novel multilevel thresholding algorithm based on differential evolution (DE) search is introduced. One of the major drawbacks of metaheuristic algorithms is the stagnation phenomenon which leads to falling into local optimums and premature convergence. To overcome this shortcoming, the idea of Darwinian theory is incorporated with DE algorithm to increase the diversity and quality of the individuals without decreasing the convergence speed of DE algorithm. A policy of encouragement and punishment is considered to lead searching agents in the search space and reduce the computational time. The algorithm is implemented based on dividing the population into specified groups and each group tries to find a better location. Ten test images are selected to verify the ability of our algorithm using the famous energy curve method. Kapur entropy and Type 2 fuzzy entropy are employed to evaluate the capability of the introduced algorithm. Nine different metaheuristic algorithms with Darwinian modes are also implemented and compared with our method. Experimental results manifest that the proposed method is a powerful tool for multilevel thresholding and the obtained results outperform the DE algorithm and other methods.
World Scientific Pub Co Pte Ltd
Title: A Darwinian Differential Evolution Algorithm for Multilevel Image Thresholding
Description:
Image segmentation is a prime operation to understand the content of images.
Multilevel thresholding is applied in image segmentation because of its speed and accuracy.
In this paper, a novel multilevel thresholding algorithm based on differential evolution (DE) search is introduced.
One of the major drawbacks of metaheuristic algorithms is the stagnation phenomenon which leads to falling into local optimums and premature convergence.
To overcome this shortcoming, the idea of Darwinian theory is incorporated with DE algorithm to increase the diversity and quality of the individuals without decreasing the convergence speed of DE algorithm.
A policy of encouragement and punishment is considered to lead searching agents in the search space and reduce the computational time.
The algorithm is implemented based on dividing the population into specified groups and each group tries to find a better location.
Ten test images are selected to verify the ability of our algorithm using the famous energy curve method.
Kapur entropy and Type 2 fuzzy entropy are employed to evaluate the capability of the introduced algorithm.
Nine different metaheuristic algorithms with Darwinian modes are also implemented and compared with our method.
Experimental results manifest that the proposed method is a powerful tool for multilevel thresholding and the obtained results outperform the DE algorithm and other methods.
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