Facial Image Retrieval on Semantic Features Using Adaptive Genetic Algorithm

The emergence of larger databases has made image retrieval techniques an essential component, and has led to the development of more efficient image retrieval systems. Retrieval can be either content or text-based. In this paper, the focus is on the content-based image retrieval from the FGNET datab...

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Main Authors: Marwan Ali SHNAN, Taha H. RASSEM
Format: Article
Language:English
Published: Inforec Association 2018-01-01
Series:Informatică economică
Subjects:
Online Access:http://revistaie.ase.ro/content/88/02%20-%20shnan,%20rassem.pdf
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spelling doaj-74680538f8c24937b28cc621858d7b5a2020-11-24T21:12:41ZengInforec AssociationInformatică economică1453-13051842-80882018-01-01224153010.12948/issn14531305/22.4.2018.02Facial Image Retrieval on Semantic Features Using Adaptive Genetic AlgorithmMarwan Ali SHNANTaha H. RASSEMThe emergence of larger databases has made image retrieval techniques an essential component, and has led to the development of more efficient image retrieval systems. Retrieval can be either content or text-based. In this paper, the focus is on the content-based image retrieval from the FGNET database. Input query images are subjected to several processing techniques in the database before computing the squared Euclidean distance (SED) between them. The images with the shortest Euclidean distance are considered as a match and are retrieved. The processing techniques involve the application of the median modified Weiner filter (MMWF), extraction of the low-level features using histogram-oriented gradients (HOG), discrete wavelet transform (DWT), GIST, and Local tetra pattern (LTrP). Finally, the features are selected using Viola-Jones algorithm. In this study, the average PSNR value obtained after applying Wiener filter was 45.29. The performance of the AGA was evaluated based on its precision, F-measure, and recall, and the obtained average values were respectively 0.75, 0.692, and 0.66. The performance matrix of the AGA was compared to those of particle swarm optimization al-gorithm (PSO) and genetic algorithm (GA) and found to perform better; thus, proving its effi-ciency.http://revistaie.ase.ro/content/88/02%20-%20shnan,%20rassem.pdfEuclidean distanceMedian modified Weiner filterHistogram oriented gradientsDiscrete wavelet transformLocal tetra patternGenetic algorithmParticle swarm optimization algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Marwan Ali SHNAN
Taha H. RASSEM
spellingShingle Marwan Ali SHNAN
Taha H. RASSEM
Facial Image Retrieval on Semantic Features Using Adaptive Genetic Algorithm
Informatică economică
Euclidean distance
Median modified Weiner filter
Histogram oriented gradients
Discrete wavelet transform
Local tetra pattern
Genetic algorithm
Particle swarm optimization algorithm
author_facet Marwan Ali SHNAN
Taha H. RASSEM
author_sort Marwan Ali SHNAN
title Facial Image Retrieval on Semantic Features Using Adaptive Genetic Algorithm
title_short Facial Image Retrieval on Semantic Features Using Adaptive Genetic Algorithm
title_full Facial Image Retrieval on Semantic Features Using Adaptive Genetic Algorithm
title_fullStr Facial Image Retrieval on Semantic Features Using Adaptive Genetic Algorithm
title_full_unstemmed Facial Image Retrieval on Semantic Features Using Adaptive Genetic Algorithm
title_sort facial image retrieval on semantic features using adaptive genetic algorithm
publisher Inforec Association
series Informatică economică
issn 1453-1305
1842-8088
publishDate 2018-01-01
description The emergence of larger databases has made image retrieval techniques an essential component, and has led to the development of more efficient image retrieval systems. Retrieval can be either content or text-based. In this paper, the focus is on the content-based image retrieval from the FGNET database. Input query images are subjected to several processing techniques in the database before computing the squared Euclidean distance (SED) between them. The images with the shortest Euclidean distance are considered as a match and are retrieved. The processing techniques involve the application of the median modified Weiner filter (MMWF), extraction of the low-level features using histogram-oriented gradients (HOG), discrete wavelet transform (DWT), GIST, and Local tetra pattern (LTrP). Finally, the features are selected using Viola-Jones algorithm. In this study, the average PSNR value obtained after applying Wiener filter was 45.29. The performance of the AGA was evaluated based on its precision, F-measure, and recall, and the obtained average values were respectively 0.75, 0.692, and 0.66. The performance matrix of the AGA was compared to those of particle swarm optimization al-gorithm (PSO) and genetic algorithm (GA) and found to perform better; thus, proving its effi-ciency.
topic Euclidean distance
Median modified Weiner filter
Histogram oriented gradients
Discrete wavelet transform
Local tetra pattern
Genetic algorithm
Particle swarm optimization algorithm
url http://revistaie.ase.ro/content/88/02%20-%20shnan,%20rassem.pdf
work_keys_str_mv AT marwanalishnan facialimageretrievalonsemanticfeaturesusingadaptivegeneticalgorithm
AT tahahrassem facialimageretrievalonsemanticfeaturesusingadaptivegeneticalgorithm
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