Improvement of CRF-Based Saliency Detection Algorithm Using Matrix Decomposition Based Features

One of the most important processing steps in the human vision system is the detection of a scene saliency map. Since saliency map can be applied to algorithms such as segmentation, compression and image retrieval, Researchers have focused on providing an efficient model to recognize it. Although a...

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Main Authors: Mohammad Shouryabi, Mohammad Javad Fadaeieslam
Format: Article
Language:fas
Published: University of Qom 2020-09-01
Series:مدیریت مهندسی و رایانش نرم
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Online Access:https://jemsc.qom.ac.ir/article_1275_1f6cd23b3430eaba3d8b821d80f59dba.pdf
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author Mohammad Shouryabi
Mohammad Javad Fadaeieslam
author_facet Mohammad Shouryabi
Mohammad Javad Fadaeieslam
author_sort Mohammad Shouryabi
collection DOAJ
description One of the most important processing steps in the human vision system is the detection of a scene saliency map. Since saliency map can be applied to algorithms such as segmentation, compression and image retrieval, Researchers have focused on providing an efficient model to recognize it. Although a lot of works have been done in this area, the obtained saliency maps are still not satisfying enough. For this purpose, we propose a simple and supervised algorithm to identify the saliency map using a conditional random field (CRF) and saliency cues. In the proposed method, local contrast, center-bias, and backgroundness features have been used for CRF training. Additionally, a new feature based on matrix decomposition has been employed to improve the performance. In the following, CRF has been trained according to the features of 20 images close to the input image. Finally, input image saliency is estimated according to calculated weights in the training phase, input image saliency cues, and ground truths. The proposed method outperforms other methods in terms of algorithm implementation accuracy and speed.
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institution Kabale University
issn 2538-6239
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language fas
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series مدیریت مهندسی و رایانش نرم
spelling doaj-art-0fdc09b8ae704bd79e7ab6c3e9432ed62025-01-30T20:17:44ZfasUniversity of Qomمدیریت مهندسی و رایانش نرم2538-62392538-26752020-09-016215116610.22091/jemsc.2018.12751275Improvement of CRF-Based Saliency Detection Algorithm Using Matrix Decomposition Based FeaturesMohammad Shouryabi0Mohammad Javad Fadaeieslam1Electrical and Computer Engineering Faculty, Semnan University,Semnan, IranElectrical and Computer Engineering Department, Semnan University Semnan, IranOne of the most important processing steps in the human vision system is the detection of a scene saliency map. Since saliency map can be applied to algorithms such as segmentation, compression and image retrieval, Researchers have focused on providing an efficient model to recognize it. Although a lot of works have been done in this area, the obtained saliency maps are still not satisfying enough. For this purpose, we propose a simple and supervised algorithm to identify the saliency map using a conditional random field (CRF) and saliency cues. In the proposed method, local contrast, center-bias, and backgroundness features have been used for CRF training. Additionally, a new feature based on matrix decomposition has been employed to improve the performance. In the following, CRF has been trained according to the features of 20 images close to the input image. Finally, input image saliency is estimated according to calculated weights in the training phase, input image saliency cues, and ground truths. The proposed method outperforms other methods in terms of algorithm implementation accuracy and speed.https://jemsc.qom.ac.ir/article_1275_1f6cd23b3430eaba3d8b821d80f59dba.pdfdetection of a scene saliencyconditional random fieldmatrix decomposition
spellingShingle Mohammad Shouryabi
Mohammad Javad Fadaeieslam
Improvement of CRF-Based Saliency Detection Algorithm Using Matrix Decomposition Based Features
مدیریت مهندسی و رایانش نرم
detection of a scene saliency
conditional random field
matrix decomposition
title Improvement of CRF-Based Saliency Detection Algorithm Using Matrix Decomposition Based Features
title_full Improvement of CRF-Based Saliency Detection Algorithm Using Matrix Decomposition Based Features
title_fullStr Improvement of CRF-Based Saliency Detection Algorithm Using Matrix Decomposition Based Features
title_full_unstemmed Improvement of CRF-Based Saliency Detection Algorithm Using Matrix Decomposition Based Features
title_short Improvement of CRF-Based Saliency Detection Algorithm Using Matrix Decomposition Based Features
title_sort improvement of crf based saliency detection algorithm using matrix decomposition based features
topic detection of a scene saliency
conditional random field
matrix decomposition
url https://jemsc.qom.ac.ir/article_1275_1f6cd23b3430eaba3d8b821d80f59dba.pdf
work_keys_str_mv AT mohammadshouryabi improvementofcrfbasedsaliencydetectionalgorithmusingmatrixdecompositionbasedfeatures
AT mohammadjavadfadaeieslam improvementofcrfbasedsaliencydetectionalgorithmusingmatrixdecompositionbasedfeatures