Image retrieval based on colour and improved NMI texture features

This paper proposes an improved method for extracting NMI features. This method uses Particle Swarm Optimization in advance to optimize the two-dimensional maximum class-to-class variance (2OTSU) in advance. Afterwards, the optimized 2OUSU is introduced into the Pulse Coupled Neural Network (PCNN) t...

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Main Authors: Anyu Du, Liejun Wang, Jiwei Qin
Format: Article
Language:English
Published: Taylor & Francis Group 2019-10-01
Series:Automatika
Subjects:
Online Access:http://dx.doi.org/10.1080/00051144.2019.1645977
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author Anyu Du
Liejun Wang
Jiwei Qin
author_facet Anyu Du
Liejun Wang
Jiwei Qin
author_sort Anyu Du
collection DOAJ
description This paper proposes an improved method for extracting NMI features. This method uses Particle Swarm Optimization in advance to optimize the two-dimensional maximum class-to-class variance (2OTSU) in advance. Afterwards, the optimized 2OUSU is introduced into the Pulse Coupled Neural Network (PCNN) to automatically obtain the number of iterations of the loop. We use an improved PCNN method to extract the NMI features of the image. For the problem of low accuracy of single feature, this paper proposes a new method of multi-feature fusion based on image retrieval. It uses HSV colour features and texture features, where, the texture feature extraction methods include: Grey Level Co-occurrence Matrix (GLCM), Local Binary Pattern (LBP) and Improved PCNN. The experimental results show that: on the Corel-1k dataset, compared with similar algorithms, the retrieval accuracy of this method is improved by 13.6%; On the AT&T dataset, the retrieval accuracy is improved by 13.4% compared with the similar algorithm; on the FD-XJ dataset, the retrieval accuracy is improved by 17.7% compared with the similar algorithm. Therefore, the proposed algorithm has better retrieval performance and robustness compared with the existing image retrieval algorithms based on multi-feature fusion.
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spelling doaj.art-82e95c5793d14260b54e17b8bddffb822022-12-22T03:19:45ZengTaylor & Francis GroupAutomatika0005-11441848-33802019-10-0160449149910.1080/00051144.2019.16459771645977Image retrieval based on colour and improved NMI texture featuresAnyu Du0Liejun Wang1Jiwei Qin2Xinjiang UniversityXinjiang UniversityShaanxi Normal UniversityThis paper proposes an improved method for extracting NMI features. This method uses Particle Swarm Optimization in advance to optimize the two-dimensional maximum class-to-class variance (2OTSU) in advance. Afterwards, the optimized 2OUSU is introduced into the Pulse Coupled Neural Network (PCNN) to automatically obtain the number of iterations of the loop. We use an improved PCNN method to extract the NMI features of the image. For the problem of low accuracy of single feature, this paper proposes a new method of multi-feature fusion based on image retrieval. It uses HSV colour features and texture features, where, the texture feature extraction methods include: Grey Level Co-occurrence Matrix (GLCM), Local Binary Pattern (LBP) and Improved PCNN. The experimental results show that: on the Corel-1k dataset, compared with similar algorithms, the retrieval accuracy of this method is improved by 13.6%; On the AT&T dataset, the retrieval accuracy is improved by 13.4% compared with the similar algorithm; on the FD-XJ dataset, the retrieval accuracy is improved by 17.7% compared with the similar algorithm. Therefore, the proposed algorithm has better retrieval performance and robustness compared with the existing image retrieval algorithms based on multi-feature fusion.http://dx.doi.org/10.1080/00051144.2019.1645977CBIRnormalized moment of inertiaPCNNmulti-feature fusionimage datasets
spellingShingle Anyu Du
Liejun Wang
Jiwei Qin
Image retrieval based on colour and improved NMI texture features
Automatika
CBIR
normalized moment of inertia
PCNN
multi-feature fusion
image datasets
title Image retrieval based on colour and improved NMI texture features
title_full Image retrieval based on colour and improved NMI texture features
title_fullStr Image retrieval based on colour and improved NMI texture features
title_full_unstemmed Image retrieval based on colour and improved NMI texture features
title_short Image retrieval based on colour and improved NMI texture features
title_sort image retrieval based on colour and improved nmi texture features
topic CBIR
normalized moment of inertia
PCNN
multi-feature fusion
image datasets
url http://dx.doi.org/10.1080/00051144.2019.1645977
work_keys_str_mv AT anyudu imageretrievalbasedoncolourandimprovednmitexturefeatures
AT liejunwang imageretrievalbasedoncolourandimprovednmitexturefeatures
AT jiweiqin imageretrievalbasedoncolourandimprovednmitexturefeatures