Color Image Segmentation using Fast Fuzzy C-Means Algorithm

This paper proposes modified FCM (Fuzzy C-means) approach to color image segmentation using JND (Just Noticeable Difference) histogram. Histogram of the given color image is computed using JND color model. This samples the color space so that just enough number of histogram bins are obtained on eac...

Full description

Bibliographic Details
Main Authors: Kishor Keshaorao Bhoyar, Omprakash G. kakde
Format: Article
Language:English
Published: Computer Vision Center Press 2010-07-01
Series:ELCVIA Electronic Letters on Computer Vision and Image Analysis
Subjects:
Online Access:https://elcvia.cvc.uab.es/article/view/361
id doaj-8b50258aab8142b1a6bcc700d863d6e7
record_format Article
spelling doaj-8b50258aab8142b1a6bcc700d863d6e72021-09-18T12:40:03ZengComputer Vision Center PressELCVIA Electronic Letters on Computer Vision and Image Analysis1577-50972010-07-019110.5565/rev/elcvia.361179Color Image Segmentation using Fast Fuzzy C-Means AlgorithmKishor Keshaorao Bhoyar0Omprakash G. kakde1Yeshwantrao Chavan College of ENgineering, NagpurVisweswarayya National Institute of TechnologyThis paper proposes modified FCM (Fuzzy C-means) approach to color image segmentation using JND (Just Noticeable Difference) histogram. Histogram of the given color image is computed using JND color model. This samples the color space so that just enough number of histogram bins are obtained on each axis without compromising the visual image content. The number of histogram bins are further reduced using agglomeration. This agglomerated histogram yields the estimation of number of clusters, cluster seeds and the initial fuzzy partition for FCM algorithm. This is a novell approach to estimate the input parameters for FCM algorithm. Then the modified FCM algorithm is proposed that works on histogram bins as data elements instead of individual pixels. This significantly reduces the time complexity of FCM algorithm. To verify the effectiveness of the proposed image segmentation approach, its performance is evaluated on Berkeley Segmentation Database(BSD). Two significant criterias namely PSNR and PRI (Probabilistic Rand Index) are used to evaluate the performance. Results show that the proposed algorithm applied to the JND histogram bins converges much faster and also gives better results than conventional FCM algorithm in terms of PSNR and PRI.https://elcvia.cvc.uab.es/article/view/361Separation and SegmentationColor Image SegmentationJND HistogramFast FCM
collection DOAJ
language English
format Article
sources DOAJ
author Kishor Keshaorao Bhoyar
Omprakash G. kakde
spellingShingle Kishor Keshaorao Bhoyar
Omprakash G. kakde
Color Image Segmentation using Fast Fuzzy C-Means Algorithm
ELCVIA Electronic Letters on Computer Vision and Image Analysis
Separation and Segmentation
Color Image Segmentation
JND Histogram
Fast FCM
author_facet Kishor Keshaorao Bhoyar
Omprakash G. kakde
author_sort Kishor Keshaorao Bhoyar
title Color Image Segmentation using Fast Fuzzy C-Means Algorithm
title_short Color Image Segmentation using Fast Fuzzy C-Means Algorithm
title_full Color Image Segmentation using Fast Fuzzy C-Means Algorithm
title_fullStr Color Image Segmentation using Fast Fuzzy C-Means Algorithm
title_full_unstemmed Color Image Segmentation using Fast Fuzzy C-Means Algorithm
title_sort color image segmentation using fast fuzzy c-means algorithm
publisher Computer Vision Center Press
series ELCVIA Electronic Letters on Computer Vision and Image Analysis
issn 1577-5097
publishDate 2010-07-01
description This paper proposes modified FCM (Fuzzy C-means) approach to color image segmentation using JND (Just Noticeable Difference) histogram. Histogram of the given color image is computed using JND color model. This samples the color space so that just enough number of histogram bins are obtained on each axis without compromising the visual image content. The number of histogram bins are further reduced using agglomeration. This agglomerated histogram yields the estimation of number of clusters, cluster seeds and the initial fuzzy partition for FCM algorithm. This is a novell approach to estimate the input parameters for FCM algorithm. Then the modified FCM algorithm is proposed that works on histogram bins as data elements instead of individual pixels. This significantly reduces the time complexity of FCM algorithm. To verify the effectiveness of the proposed image segmentation approach, its performance is evaluated on Berkeley Segmentation Database(BSD). Two significant criterias namely PSNR and PRI (Probabilistic Rand Index) are used to evaluate the performance. Results show that the proposed algorithm applied to the JND histogram bins converges much faster and also gives better results than conventional FCM algorithm in terms of PSNR and PRI.
topic Separation and Segmentation
Color Image Segmentation
JND Histogram
Fast FCM
url https://elcvia.cvc.uab.es/article/view/361
work_keys_str_mv AT kishorkeshaoraobhoyar colorimagesegmentationusingfastfuzzycmeansalgorithm
AT omprakashgkakde colorimagesegmentationusingfastfuzzycmeansalgorithm
_version_ 1717376909949534208