2022
DOI: 10.3390/app122010522
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A Hybrid Linear Iterative Clustering and Bayes Classification-Based GrabCut Segmentation Scheme for Dynamic Detection of Cervical Cancer

Abstract: Cervical cancer earlier detection remains indispensable for enhancing the survival rate probability among women patients worldwide. The early detection of cervical cancer is done relatively by using the Pap Smear cell Test. This method of detection is challenged by the degradation phenomenon within the image segmentation task that arises when the superpixel count is minimized. This paper introduces a Hybrid Linear Iterative Clustering and Bayes classification-based GrabCut Segmentation Technique (HLC-BC-GCST) … Show more

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Cited by 5 publications
(1 citation statement)
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“…The findings of this NGC based cervical cancer diagnosis methodology have been proven to be 13% better on average than typical graph cut orientated cancer detection methodologies. Magaraja et al [5] proposed a hybrid linear iterative clustering and bayes classification-based GrabCut Segmentation (HLC-BC-GCST) method for detecting cervical cancer. The derived energy function is produced from the linear iterative clustering characteristics of the gaussian mixture model (GMM) model and then used to recreate the graph cut model using bayes classification for enhanced calculation and implementation.…”
Section: Introductionmentioning
confidence: 99%
“…The findings of this NGC based cervical cancer diagnosis methodology have been proven to be 13% better on average than typical graph cut orientated cancer detection methodologies. Magaraja et al [5] proposed a hybrid linear iterative clustering and bayes classification-based GrabCut Segmentation (HLC-BC-GCST) method for detecting cervical cancer. The derived energy function is produced from the linear iterative clustering characteristics of the gaussian mixture model (GMM) model and then used to recreate the graph cut model using bayes classification for enhanced calculation and implementation.…”
Section: Introductionmentioning
confidence: 99%