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Comparison of intelligent techniques for multilevel thresholding problem

机译:多级阈值问题智能技术的比较

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Segmentation is low-level image transformation routine that partitions an input image into distinct disjoint and homogeneous regions using thresholding algorithms. This paper presents both adaptation and comparison of four stochastic optimisation techniques to solve multilevel thresholding problem in image segmentation: Genetic Algorithm (GA), Particle Swarm Optimisation (PSO), Bacterial Foraging (BF) and Modified BF (MBF). Three objective functions such as Tsallis, Kapur's and Otsu's functions are considered and maximised by the above four algorithms. In order to compare the performances of all the algorithms, they are tested on various test images. Results show that the BF and MBF are much better in terms of robustness and time convergence than the PSO and GA. Among the last two algorithms, MBF is the most efficient with respect to the quality of the solution in terms of Peak Signal to Noise Ratio (PSNR) value and stability.
机译:分割是一种低级图像变换例程,它使用阈值算法将输入图像划分为不同的不相交区域和同质区域。本文介绍了用于解决图像分割中多级阈值问题的四种随机优化技术的适应性和比较性:遗传算法(GA),粒子群优化(PSO),细菌觅食(BF)和改进的BF(MBF)。上述四种算法考虑并最大化了三个目标函数,例如Tsallis,Kapur和Otsu函数。为了比较所有算法的性能,在各种测试图像上对它们进行了测试。结果表明,BF和MBF在鲁棒性和时间收敛性方面比PSO和GA更好。在最后两种算法中,就峰值信噪比(PSNR)值和稳定性而言,MBF在解决方案质量方面是最高效的。

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