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Published in: Diagnostic Pathology 1/2008

Open Access 01-12-2008 | Proceedings

Colour model analysis for microscopic image processing

Authors: Gloria Bueno, Roberto González, Oscar Déniz, Jesús González, Marcial García-Rojo

Published in: Diagnostic Pathology | Special Issue 1/2008

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Abstract

This article presents a comparative study between different colour models (RGB, HSI and CIEL*a*b*) applied to a very large microscopic image analysis. Such analysis of different colour models is needed in order to carry out a successful detection and therefore a classification of different regions of interest (ROIs) within the image. This, in turn, allows both distinguishing possible ROIs and retrieving their proper colour for further ROI analysis. This analysis is not commonly done in many biomedical applications that deal with colour images. Other important aspects is the computational cost of the different processing algorithms according to the colour model. This work takes these aspects into consideration to choose the best colour model tailored to the microscopic stain and tissue type under consideration and to obtain a successful processing of the histological image.
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Metadata
Title
Colour model analysis for microscopic image processing
Authors
Gloria Bueno
Roberto González
Oscar Déniz
Jesús González
Marcial García-Rojo
Publication date
01-12-2008
Publisher
BioMed Central
Published in
Diagnostic Pathology / Issue Special Issue 1/2008
Electronic ISSN: 1746-1596
DOI
https://doi.org/10.1186/1746-1596-3-S1-S18

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