Fusion of Measures for Image Segmentation Evaluation

Image segmentation is an important task in image processing. However, no universally accepted quality scheme exists for evaluating the performance of various segmentation algorithms or just different parameterizations of the same algorithm. In this paper, an extension of a fusion-based framework for...

Full description

Bibliographic Details
Main Authors: Macmillan Simfukwe, Bo Peng, Tianrui Li
Format: Article
Language:English
Published: Atlantis Press 2019-02-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/125905654/view
id doaj-2db26d1db08c451ab087e3556dd99b89
record_format Article
spelling doaj-2db26d1db08c451ab087e3556dd99b892020-11-25T02:03:34ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832019-02-0112110.2991/ijcis.2019.125905654Fusion of Measures for Image Segmentation EvaluationMacmillan SimfukweBo PengTianrui LiImage segmentation is an important task in image processing. However, no universally accepted quality scheme exists for evaluating the performance of various segmentation algorithms or just different parameterizations of the same algorithm. In this paper, an extension of a fusion-based framework for evaluating image segmentation quality is proposed. This framework uses supervised image segmentation evaluation measures as features. These features are combined together and used to train and test a number of classifiers. Preliminary results for this framework, using seven evaluation measures, were reported with an accuracy rate of 80%. In this study, ten image segmentation evaluation measures are used, nine of which have already been proposed in literature. Moreover, one novel measure is proposed, based on the Discrete Cosine Transform (DCT), and is thus named the DCT metric. Before applying it in the fusion-based framework, the DCT metric is first compared with some state-of-the-art evaluation measures. Experimental results demonstrate that the DCT metric outperforms some existing measures. The extended fusion-based framework for image segmentation evaluation proposed in the study outperforms the original fusion-based framework, with an accuracy rate of 86% and a large Kappa value equal to 0.72. Hence, the novelty in this paper is in two aspects: firstly, the DCT metric and secondly, the extension of the fusion-based framework for evaluation of image segmentation quality.https://www.atlantis-press.com/article/125905654/viewImage segmentation evaluationData fusionDiscrete Cosine TransformClassifier model
collection DOAJ
language English
format Article
sources DOAJ
author Macmillan Simfukwe
Bo Peng
Tianrui Li
spellingShingle Macmillan Simfukwe
Bo Peng
Tianrui Li
Fusion of Measures for Image Segmentation Evaluation
International Journal of Computational Intelligence Systems
Image segmentation evaluation
Data fusion
Discrete Cosine Transform
Classifier model
author_facet Macmillan Simfukwe
Bo Peng
Tianrui Li
author_sort Macmillan Simfukwe
title Fusion of Measures for Image Segmentation Evaluation
title_short Fusion of Measures for Image Segmentation Evaluation
title_full Fusion of Measures for Image Segmentation Evaluation
title_fullStr Fusion of Measures for Image Segmentation Evaluation
title_full_unstemmed Fusion of Measures for Image Segmentation Evaluation
title_sort fusion of measures for image segmentation evaluation
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2019-02-01
description Image segmentation is an important task in image processing. However, no universally accepted quality scheme exists for evaluating the performance of various segmentation algorithms or just different parameterizations of the same algorithm. In this paper, an extension of a fusion-based framework for evaluating image segmentation quality is proposed. This framework uses supervised image segmentation evaluation measures as features. These features are combined together and used to train and test a number of classifiers. Preliminary results for this framework, using seven evaluation measures, were reported with an accuracy rate of 80%. In this study, ten image segmentation evaluation measures are used, nine of which have already been proposed in literature. Moreover, one novel measure is proposed, based on the Discrete Cosine Transform (DCT), and is thus named the DCT metric. Before applying it in the fusion-based framework, the DCT metric is first compared with some state-of-the-art evaluation measures. Experimental results demonstrate that the DCT metric outperforms some existing measures. The extended fusion-based framework for image segmentation evaluation proposed in the study outperforms the original fusion-based framework, with an accuracy rate of 86% and a large Kappa value equal to 0.72. Hence, the novelty in this paper is in two aspects: firstly, the DCT metric and secondly, the extension of the fusion-based framework for evaluation of image segmentation quality.
topic Image segmentation evaluation
Data fusion
Discrete Cosine Transform
Classifier model
url https://www.atlantis-press.com/article/125905654/view
work_keys_str_mv AT macmillansimfukwe fusionofmeasuresforimagesegmentationevaluation
AT bopeng fusionofmeasuresforimagesegmentationevaluation
AT tianruili fusionofmeasuresforimagesegmentationevaluation
_version_ 1724947421096574976