A Gallery-Guided Graph Architecture for Sequential Impurity Detection

Ambiguous appearance discrimination plays an important role in the impurity detection task. Among the majority of deep learning models, images from every sequence are processed separately instead of being considered collectively. Therefore, the outputs of these models given a single region proposal...

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Main Authors: Wenhao He, Haitao Song, Yue Guo, Xiaoyi Yin, Xiaonan Wang, Guibin Bian, Wen Qian
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8864060/
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spelling doaj-8fd2f5a9961242fdb66f7f874cb3ff2a2021-03-29T23:16:54ZengIEEEIEEE Access2169-35362019-01-01714910514911610.1109/ACCESS.2019.29468618864060A Gallery-Guided Graph Architecture for Sequential Impurity DetectionWenhao He0Haitao Song1Yue Guo2https://orcid.org/0000-0003-4290-7228Xiaoyi Yin3Xiaonan Wang4Guibin Bian5Wen Qian6Chinese Academy of Sciences, Institute of Automation, Beijing, ChinaChinese Academy of Sciences, Institute of Automation, Beijing, ChinaChinese Academy of Sciences, Institute of Automation, Beijing, ChinaChinese Academy of Sciences, Institute of Computing Technology, Beijing, ChinaChinese Academy of Sciences, Institute of Automation, Beijing, ChinaChinese Academy of Sciences, Institute of Automation, Beijing, ChinaChinese Academy of Sciences, Institute of Automation, Beijing, ChinaAmbiguous appearance discrimination plays an important role in the impurity detection task. Among the majority of deep learning models, images from every sequence are processed separately instead of being considered collectively. Therefore, the outputs of these models given a single region proposal might not be accurate. In this paper, a gallery-guided graph architecture is proposed and integrated to overcome such limitations. Specifically, region proposals are firstly generated using a two-stream fusion network; then their feature embeddings are extracted from a convolutional neural network by reducing intra-class variations while increasing inter-class ones. Secondly, a graph representing clusters among different training sequences updates relationships between region proposals in the test sequence. Finally, the features of the graph are classified by a graph convolutional neural network. Different from those learned weights in conventional common object detectors, region features from all the training sequences are explicitly integrated into a gallery-guided graph architecture. Extensive experiments on IML-DET dataset demonstrate that our proposed method can obtain competitive performances compared with previous state-of-the-art object detection approaches transferred into this task.https://ieeexplore.ieee.org/document/8864060/Impurity detectiongallery-guided graphfeature embeddinggraph convolutional neural network
collection DOAJ
language English
format Article
sources DOAJ
author Wenhao He
Haitao Song
Yue Guo
Xiaoyi Yin
Xiaonan Wang
Guibin Bian
Wen Qian
spellingShingle Wenhao He
Haitao Song
Yue Guo
Xiaoyi Yin
Xiaonan Wang
Guibin Bian
Wen Qian
A Gallery-Guided Graph Architecture for Sequential Impurity Detection
IEEE Access
Impurity detection
gallery-guided graph
feature embedding
graph convolutional neural network
author_facet Wenhao He
Haitao Song
Yue Guo
Xiaoyi Yin
Xiaonan Wang
Guibin Bian
Wen Qian
author_sort Wenhao He
title A Gallery-Guided Graph Architecture for Sequential Impurity Detection
title_short A Gallery-Guided Graph Architecture for Sequential Impurity Detection
title_full A Gallery-Guided Graph Architecture for Sequential Impurity Detection
title_fullStr A Gallery-Guided Graph Architecture for Sequential Impurity Detection
title_full_unstemmed A Gallery-Guided Graph Architecture for Sequential Impurity Detection
title_sort gallery-guided graph architecture for sequential impurity detection
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Ambiguous appearance discrimination plays an important role in the impurity detection task. Among the majority of deep learning models, images from every sequence are processed separately instead of being considered collectively. Therefore, the outputs of these models given a single region proposal might not be accurate. In this paper, a gallery-guided graph architecture is proposed and integrated to overcome such limitations. Specifically, region proposals are firstly generated using a two-stream fusion network; then their feature embeddings are extracted from a convolutional neural network by reducing intra-class variations while increasing inter-class ones. Secondly, a graph representing clusters among different training sequences updates relationships between region proposals in the test sequence. Finally, the features of the graph are classified by a graph convolutional neural network. Different from those learned weights in conventional common object detectors, region features from all the training sequences are explicitly integrated into a gallery-guided graph architecture. Extensive experiments on IML-DET dataset demonstrate that our proposed method can obtain competitive performances compared with previous state-of-the-art object detection approaches transferred into this task.
topic Impurity detection
gallery-guided graph
feature embedding
graph convolutional neural network
url https://ieeexplore.ieee.org/document/8864060/
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