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Chromosome Segmentation and Investigations using Generalized Gradient Vector Flow Active Contours

Prabhu Britto, Albert and Ravindran, Gurubatham (2005) Chromosome Segmentation and Investigations using Generalized Gradient Vector Flow Active Contours. [Journal (On-line/Unpaginated)]

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Abstract

We investigated Generalized Gradient Vector Flow Active Contours as a suitable boundary mapping technique for Chromosome spread images which have variability in shape and size, expecting to yield a robust segmentation scheme that can be used for segmentation of similar class of images based on optimal set of parameter values. It is found experimentally that a unique set of parameter values is required for boundary mapping each chromosome image. Characterization studies have established that each parameter has an optimal range of values within which good boundary mapping results can be obtained in similar class of images. Statistical testing validates the experimental results.

Item Type:Journal (On-line/Unpaginated)
Keywords:Generalized Gradient Vector Flow, Active Contours, Deformable Curves, Chromosome, Boundary Mapping, Characterization
Subjects:JOURNALS > Online Journal of Health and Allied Sciences
ID Code:4552
Deposited By: Kakkilaya Bevinje, Dr. Srinivas
Deposited On:20 Oct 2005
Last Modified:11 Mar 2011 08:56

References in Article

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