Journal Article10.1016/J.ESWA.2016.03.032
An efficient cuckoo search algorithm based multilevel thresholding for segmentation of satellite images using different objective functions
Shilpa Suresh,Shyam Lal +1 more
182
TL;DR: The proposed CSMcCulloch algorithm evolved to be most promising, and computationally efficient for segmenting satellite images, and outperforms others in attaining stable global optimum thresholds.
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Abstract: This paper proposes a computationally efficient optimization algorithm for segmenting colour satellite images.CS algorithm incorporating Mantegna's and McCulloch's method for modeling levy flight is presented.PSO, DPSO, ABC and CS algorithms are compared with the proposed algorithm.All these optimization algorithms are exploited using three different objective functions.Performance assessment metrics demonstrated the improvement in the efficiency of the proposed algorithm. Satellite image segmentation is challenging due to the presence of weakly correlated and ambiguous multiple regions of interest. Several bio-inspired algorithms were developed to generate optimum threshold values for segmenting such images efficiently. Their exhaustive search nature makes them computationally expensive when extended to multilevel thresholding. In this paper, we propose a computationally efficient image segmentation algorithm, called CSMcCulloch, incorporating McCulloch's method for l e ? v y flight generation in Cuckoo Search (CS) algorithm. We have also investigated the impact of Mantegna's method for l e ? v y flight generation in CS algorithm (CSMantegna) by comparing it with the conventional CS algorithm which uses the simplified version of the same. CSMantegna algorithm resulted in improved segmentation quality with an expense of computational time. The performance of the proposed CSMcCulloch algorithm is compared with other bio-inspired algorithms such as Particle Swarm Optimization (PSO) algorithm, Darwinian Particle Swarm Optimization (DPSO) algorithm, Artificial Bee Colony (ABC) algorithm, Cuckoo Search (CS) algorithm and CSMantegna algorithm using Otsu's method, Kapur entropy and Tsallis entropy as objective functions. Experimental results were validated by measuring PSNR, MSE, FSIM and CPU running time for all the cases investigated. The proposed CSMcCulloch algorithm evolved to be most promising, and computationally efficient for segmenting satellite images. Convergence rate analysis also reveals that the proposed algorithm outperforms others in attaining stable global optimum thresholds. The experiments results encourages related researches in computer vision, remote sensing and image processing applications.
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Citations
Change detection techniques for remote sensing applications: a survey
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TL;DR: This study attempts to provide a comprehensive review of the fundamental processes required for change detection with a brief account of the main techniques of change detection and discusses the need for development of enhanced change detection methods.
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A survey on applications and variants of the cuckoo search algorithm
TL;DR: A comprehensive review of all conducting intensive research survey into the pros and cons, main architecture, and extended versions of this algorithm.
287
Social Network Search for Solving Engineering Optimization Problems.
TL;DR: In this article, a new metaheuristic optimization algorithm, called social network search (SNS), is employed for solving mixed continuous/discrete engineering optimization problems, which mimics the social network user's efforts to gain more popularity by modeling the decision moods in expressing their opinions.
Snap-drift cuckoo search
Hojjat Rakhshani,Amin Rahati +1 more
- 01 Mar 2017
TL;DR: Yang et al. as mentioned in this paper proposed a novel cuckoo optimization algorithm called Snap-drift Cuckoo Search (SDCS), which employs reinforcement learning principles and improved search operators to achieve a more rapid and robust algorithm.
140
Image Segmentation Using Multilevel Thresholding: A Research Review
TL;DR: An exhaustive survey has been carried out, considering both the general purpose and satellite images to cover the performance comparison of various image segmentation approaches based on meta-heuristics optimization algorithms, present in the literature for multilevel image thresholding.
131
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