Matches in SemOpenAlex for { <https://semopenalex.org/work/W3162472416> ?p ?o ?g. }
- W3162472416 abstract "Multilevel thresholding is a basic method in image segmentation. The conventional image multilevel thresholding algorithms are computationally expensive when the number of decomposed segments is high. In this paper, a novel and powerful technique is suggested for Crow Search Algorithm (CSA) devoted to segmentation applications. The main contribution of our work is to adapt Darwinian evolutionary theory with heuristic CSA. First, the population is divided into specified groups and each group tries to find better location in the search space. A policy of encouragement and punishment is set on searching agents to avoid being trapped in the local optimum and premature solutions. Moreover, to increase the convergence rate of the proposed method, a gray-scale map is applied to out-boundary agents. Ten test images are selected to measure the ability of our algorithm, compared with the famous procedure, energy curve method. Two popular entropies i.e. Otsu and Kapur are employed to evaluate the capability of the introduced algorithm. Eight different search algorithms are implemented and compared to the introduced method. The obtained results show that our method, compared with the original CSA, and other heuristic search methods, can extract multi-level thresholding more efficiently." @default.
- W3162472416 created "2021-05-24" @default.
- W3162472416 creator A5000173534 @default.
- W3162472416 creator A5019871416 @default.
- W3162472416 date "2021-04-22" @default.
- W3162472416 modified "2023-09-25" @default.
- W3162472416 title "A Study on Darwinian Crow Search Algorithm for Multilevel Thresholding" @default.
- W3162472416 cites W148936622 @default.
- W3162472416 cites W1899736123 @default.
- W3162472416 cites W2006010966 @default.
- W3162472416 cites W2037031008 @default.
- W3162472416 cites W2083970667 @default.
- W3162472416 cites W2096166399 @default.
- W3162472416 cites W2114652055 @default.
- W3162472416 cites W2120641882 @default.
- W3162472416 cites W2133059825 @default.
- W3162472416 cites W2141983208 @default.
- W3162472416 cites W2261079877 @default.
- W3162472416 cites W2306115793 @default.
- W3162472416 cites W2593262833 @default.
- W3162472416 cites W2605810061 @default.
- W3162472416 cites W2680095193 @default.
- W3162472416 cites W2763263207 @default.
- W3162472416 cites W2774612793 @default.
- W3162472416 cites W2779790613 @default.
- W3162472416 cites W2790845340 @default.
- W3162472416 cites W2793758168 @default.
- W3162472416 cites W2804231978 @default.
- W3162472416 cites W2810352113 @default.
- W3162472416 cites W2810540872 @default.
- W3162472416 cites W2883827314 @default.
- W3162472416 cites W2896457000 @default.
- W3162472416 cites W2914985802 @default.
- W3162472416 cites W2915479571 @default.
- W3162472416 cites W2915692302 @default.
- W3162472416 cites W2916669951 @default.
- W3162472416 cites W2920865086 @default.
- W3162472416 cites W2922096023 @default.
- W3162472416 cites W2939018077 @default.
- W3162472416 cites W2940815738 @default.
- W3162472416 cites W2945156782 @default.
- W3162472416 cites W2945195937 @default.
- W3162472416 cites W2946878132 @default.
- W3162472416 cites W2950554611 @default.
- W3162472416 cites W2958429731 @default.
- W3162472416 cites W2962753956 @default.
- W3162472416 cites W2967556371 @default.
- W3162472416 cites W2968480306 @default.
- W3162472416 cites W2978868208 @default.
- W3162472416 cites W2979491048 @default.
- W3162472416 cites W2981250077 @default.
- W3162472416 cites W2997838783 @default.
- W3162472416 cites W3006746595 @default.
- W3162472416 doi "https://doi.org/10.1142/s0219467822500127" @default.
- W3162472416 hasPublicationYear "2021" @default.
- W3162472416 type Work @default.
- W3162472416 sameAs 3162472416 @default.
- W3162472416 citedByCount "1" @default.
- W3162472416 countsByYear W31624724162022 @default.
- W3162472416 crossrefType "journal-article" @default.
- W3162472416 hasAuthorship W3162472416A5000173534 @default.
- W3162472416 hasAuthorship W3162472416A5019871416 @default.
- W3162472416 hasConcept C11413529 @default.
- W3162472416 hasConcept C115961682 @default.
- W3162472416 hasConcept C124504099 @default.
- W3162472416 hasConcept C144024400 @default.
- W3162472416 hasConcept C149923435 @default.
- W3162472416 hasConcept C153180895 @default.
- W3162472416 hasConcept C154945302 @default.
- W3162472416 hasConcept C173801870 @default.
- W3162472416 hasConcept C191178318 @default.
- W3162472416 hasConcept C2908647359 @default.
- W3162472416 hasConcept C41008148 @default.
- W3162472416 hasConcept C89600930 @default.
- W3162472416 hasConceptScore W3162472416C11413529 @default.
- W3162472416 hasConceptScore W3162472416C115961682 @default.
- W3162472416 hasConceptScore W3162472416C124504099 @default.
- W3162472416 hasConceptScore W3162472416C144024400 @default.
- W3162472416 hasConceptScore W3162472416C149923435 @default.
- W3162472416 hasConceptScore W3162472416C153180895 @default.
- W3162472416 hasConceptScore W3162472416C154945302 @default.
- W3162472416 hasConceptScore W3162472416C173801870 @default.
- W3162472416 hasConceptScore W3162472416C191178318 @default.
- W3162472416 hasConceptScore W3162472416C2908647359 @default.
- W3162472416 hasConceptScore W3162472416C41008148 @default.
- W3162472416 hasConceptScore W3162472416C89600930 @default.
- W3162472416 hasIssue "01" @default.
- W3162472416 hasLocation W31624724161 @default.
- W3162472416 hasOpenAccess W3162472416 @default.
- W3162472416 hasPrimaryLocation W31624724161 @default.
- W3162472416 hasRelatedWork W2018206842 @default.
- W3162472416 hasRelatedWork W2045391057 @default.
- W3162472416 hasRelatedWork W2047939071 @default.
- W3162472416 hasRelatedWork W2181351615 @default.
- W3162472416 hasRelatedWork W2347731544 @default.
- W3162472416 hasRelatedWork W2350588503 @default.
- W3162472416 hasRelatedWork W2386894152 @default.
- W3162472416 hasRelatedWork W2551390060 @default.
- W3162472416 hasRelatedWork W2769503664 @default.
- W3162472416 hasRelatedWork W3042202238 @default.