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A Context Sensitive Multilevel Thresholding Using Swarm Based Algorithms 被引量:3

A Context Sensitive Multilevel Thresholding Using Swarm Based Algorithms
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摘要 In this paper, a comprehensive energy function is used to formulate the three most popular objective functions:Kapur's, Otsu and Tsalli's functions for performing effective multilevel color image thresholding. These new energy based objective criterions are further combined with the proficient search capability of swarm based algorithms to improve the efficiency and robustness. The proposed multilevel thresholding approach accurately determines the optimal threshold values by using generated energy curve, and acutely distinguishes different objects within the multi-channel complex images. The performance evaluation indices and experiments on different test images illustrate that Kapur's entropy aided with differential evolution and bacterial foraging optimization algorithm generates the most accurate and visually pleasing segmented images. In this paper, a comprehensive energy function is used to formulate the three most popular objective functions:Kapur’s, Otsu and Tsalli’s functions for performing effective multilevel color image thresholding. These new energy based objective criterions are further combined with the proficient search capability of swarm based algorithms to improve the efficiency and robustness. The proposed multilevel thresholding approach accurately determines the optimal threshold values by using generated energy curve, and acutely distinguishes different objects within the multi-channel complex images. The performance evaluation indices and experiments on different test images illustrate that Kapur’s entropy aided with differential evolution and bacterial foraging optimization algorithm generates the most accurate and visually pleasing segmented images.
出处 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2019年第6期1471-1486,共16页 自动化学报(英文版)
关键词 Color image segmentation Kapur's ENTROPY MULTILEVEL THRESHOLDING OTSU method SWARM based optimization ALGORITHMS Tsalli's ENTROPY Color image segmentation Kapur’s entropy multilevel thresholding Otsu method swarm based optimization algorithms Tsalli’s entropy
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