“…The proposed scheme in future may be extended for medical image segmentation due to its rapid segmentation capability 54 | Improved Particle Swarm Optimization (IPSO) algorithm aided with fuzzy-entropy, IPSO-Fuzzy. Output of IPSO-fuzzy is used to train SVM classifier | Fuzzy entropy | Chakraborty et al ( 2019a ) | Various Satellite and Standard Color Images | Proposed method is compared with CS, DE, FF, GA and PSO | PSNR, FSIM, Overall Accuracy, Kappa Index, Mean Accuracy and IoU | The proposed IPSO doesn’t prematurely converge and in future may be applied on some larger dataset like ImageNet, COCO with respect to object recognition |
55 | Improved Elephant Herding Optimization (IEHO) | Kapur’s entropy and between-class variance (Otsu’s thresholding) | Chakraborty et al ( 2019b ) | Standard Gray Scale Images | Proposed method is compared with CS, ABC, BA, PSO, EHO and DP | PSNR, FSIM and SSIM | The proposed IEHO performs better than that of the conventional algorithms both in terms of quality and convergence rate |
56 | Whale Optimization Algorithm-Differential Evolution(WOA-DE) | Kapur’s entropy | Lang and Jia ( 2019 ) | MRI: Medical Images, Satellite Images, standard gray scale Images | Proposed method is compared with WOA, SSA, SCA, ALO, HSO, BA, PSO, BDE and IDSA. Otsu WOA-DE is compared with Kapur WOA-DE | Average Fitness Values, PSNR, FSIM and SSIM | The proposed WOA-DE avoids the loss due to population diversity and dropping into local optimum. |
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