2017
DOI: 10.1002/jemt.22900
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Modified cuckoo search algorithm in microscopic image segmentation of hippocampus

Abstract: Microscopic image analysis is one of the challenging tasks due to the presence of weak correlation and different segments of interest that may lead to ambiguity. It is also valuable in foremost meadows of technology and medicine. Identification and counting of cells play a vital role in features extraction to diagnose particular diseases precisely. Different segments should be identified accurately in order to identify and to count cells in a microscope image. Consequently, in the current work, a novel method … Show more

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Cited by 105 publications
(18 citation statements)
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“…5. Black hole optimization [55] Modified cuckoo search [57] Fruit fly optimization [56] FEMO [58] Our proposed approach Fig. 4.…”
Section: B Experimental Resultsmentioning
confidence: 99%
“…5. Black hole optimization [55] Modified cuckoo search [57] Fruit fly optimization [56] FEMO [58] Our proposed approach Fig. 4.…”
Section: B Experimental Resultsmentioning
confidence: 99%
“…The first approach is based on finding a reference criterion that can be used to optimise the parameters of a segmentation algorithm [17]. For instance, Chakraborty et al [18] applied a modified version of the search algorithm of the cuckoo for segmenting bidimensional microscopic images of the hippocampus in an unsupervised way. To do that, they optimised segmentation methods based on thresholding, even though they found unsatisfactory results for low levels of thresholds.…”
Section: Related Workmentioning
confidence: 99%
“…Mean-squared error, peak signal to noise ratio and structural similarity index can be obtained using Equations 28, 29 and 30, respectively. An efficient image segmentation method is the one, which achieves the lower , higher and higher (Suresh and Lal, 2017;Mishra and Panda, 2018;Chakraborty et al, 2017). denotes the maximum intensity value in the original image.…”
Section: Performance Metricsmentioning
confidence: 99%