Inaccurate Supervised Saliency Detection Based on Iterative Feedback Framework

Machine learning based bottom-up saliency detection (MLBU) methods are very popular recently. These MLBU methods firstly use prior knowledge to select some regions from the given image as training samples and label them. Based on training set, a saliency classifier is learned to classify salient obj...

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Main Authors: Yu Pang, Yunhe Wu, Chengdong Wu, Xiaosheng Yu, Yuan Gao
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9112188/
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spelling doaj-0707ff83c999417cb84bdff2c14c418d2021-03-30T02:28:02ZengIEEEIEEE Access2169-35362020-01-01811148211149310.1109/ACCESS.2020.30010419112188Inaccurate Supervised Saliency Detection Based on Iterative Feedback FrameworkYu Pang0Yunhe Wu1Chengdong Wu2https://orcid.org/0000-0001-6152-3671Xiaosheng Yu3Yuan Gao4Faculty of Robot Science and Engineering, Northeastern University, Shenyang, ChinaCollege of Information Science and Engineering, Northeastern University, Shenyang, ChinaFaculty of Robot Science and Engineering, Northeastern University, Shenyang, ChinaFaculty of Robot Science and Engineering, Northeastern University, Shenyang, ChinaCollege of Information Science and Engineering, Northeastern University, Shenyang, ChinaMachine learning based bottom-up saliency detection (MLBU) methods are very popular recently. These MLBU methods firstly use prior knowledge to select some regions from the given image as training samples and label them. Based on training set, a saliency classifier is learned to classify salient object and background by applying machine learning algorithms in the given image. Nevertheless, training labels obtained by prior knowledge are not always accurate in some complex scenes, inaccurate training set is hard to make subsequent learning process succeed. To solve this problem, we propose an inaccurate supervised learning (ISL) based saliency detection framework, which assumes that training labels obtained by prior knowledge might be inaccurate and constructs three checking rules to remove mislabeled samples for more accurate training set construction. The refined training set is used to learn a saliency classifier which can better predict each image region. To obtain more accurate saliency inference, the proposed ISL process is introduced into a novel iterative feedback (IF) framework to generate better saliency result. Finally, we use smoothness operator to further smooth saliency result for performance improvement. Experimental results on three benchmark datasets demonstrate adequately the superiority of the proposed method.https://ieeexplore.ieee.org/document/9112188/Saliency detectionprior knowledgeinaccurate supervised learningiterative feedback classificationsmoothness optimization
collection DOAJ
language English
format Article
sources DOAJ
author Yu Pang
Yunhe Wu
Chengdong Wu
Xiaosheng Yu
Yuan Gao
spellingShingle Yu Pang
Yunhe Wu
Chengdong Wu
Xiaosheng Yu
Yuan Gao
Inaccurate Supervised Saliency Detection Based on Iterative Feedback Framework
IEEE Access
Saliency detection
prior knowledge
inaccurate supervised learning
iterative feedback classification
smoothness optimization
author_facet Yu Pang
Yunhe Wu
Chengdong Wu
Xiaosheng Yu
Yuan Gao
author_sort Yu Pang
title Inaccurate Supervised Saliency Detection Based on Iterative Feedback Framework
title_short Inaccurate Supervised Saliency Detection Based on Iterative Feedback Framework
title_full Inaccurate Supervised Saliency Detection Based on Iterative Feedback Framework
title_fullStr Inaccurate Supervised Saliency Detection Based on Iterative Feedback Framework
title_full_unstemmed Inaccurate Supervised Saliency Detection Based on Iterative Feedback Framework
title_sort inaccurate supervised saliency detection based on iterative feedback framework
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Machine learning based bottom-up saliency detection (MLBU) methods are very popular recently. These MLBU methods firstly use prior knowledge to select some regions from the given image as training samples and label them. Based on training set, a saliency classifier is learned to classify salient object and background by applying machine learning algorithms in the given image. Nevertheless, training labels obtained by prior knowledge are not always accurate in some complex scenes, inaccurate training set is hard to make subsequent learning process succeed. To solve this problem, we propose an inaccurate supervised learning (ISL) based saliency detection framework, which assumes that training labels obtained by prior knowledge might be inaccurate and constructs three checking rules to remove mislabeled samples for more accurate training set construction. The refined training set is used to learn a saliency classifier which can better predict each image region. To obtain more accurate saliency inference, the proposed ISL process is introduced into a novel iterative feedback (IF) framework to generate better saliency result. Finally, we use smoothness operator to further smooth saliency result for performance improvement. Experimental results on three benchmark datasets demonstrate adequately the superiority of the proposed method.
topic Saliency detection
prior knowledge
inaccurate supervised learning
iterative feedback classification
smoothness optimization
url https://ieeexplore.ieee.org/document/9112188/
work_keys_str_mv AT yupang inaccuratesupervisedsaliencydetectionbasedoniterativefeedbackframework
AT yunhewu inaccuratesupervisedsaliencydetectionbasedoniterativefeedbackframework
AT chengdongwu inaccuratesupervisedsaliencydetectionbasedoniterativefeedbackframework
AT xiaoshengyu inaccuratesupervisedsaliencydetectionbasedoniterativefeedbackframework
AT yuangao inaccuratesupervisedsaliencydetectionbasedoniterativefeedbackframework
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