Online multimodal co-indexing and retrieval of weakly labeled web image collections
Weak supervisory information of web images, such as captions, tags, and descriptions, make it possible to better understand images at the semantic level. In this paper, we propose a novel online multimodal co-indexing algorithm based on Adaptive Resonance Theory, named OMC-ART, for the automatic co-...
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sg-smu-ink.sis_research-64762020-12-24T02:59:20Z Online multimodal co-indexing and retrieval of weakly labeled web image collections MENG, Lei TAN, Ah-hwee LEUNG, Cyril NIE, Liqiang CHUA, Tan-Seng MIAO, Chunyan Weak supervisory information of web images, such as captions, tags, and descriptions, make it possible to better understand images at the semantic level. In this paper, we propose a novel online multimodal co-indexing algorithm based on Adaptive Resonance Theory, named OMC-ART, for the automatic co-indexing and retrieval of images using their multimodal information. Compared with existing studies, OMC-ART has several distinct characteristics. First, OMCART is able to perform online learning of sequential data. Second, OMC-ART builds a two-layer indexing structure, in which the first layer co-indexes the images by the key visual and textual features based on the generalized distributions of clusters they belong to; while in the second layer, images are co-indexed by their own feature distributions. Third, OMC-ART enables flexible multimodal search by using either visual features, keywords, or a combination of both. Fourth, OMC-ART employs a ranking algorithm that does not need to go through the whole indexing system when only a limited number of images need to be retrieved. Experiments on two published data sets demonstrate the efficiency and effectiveness of our proposed approach. 2015-06-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5473 info:doi/10.1145/2671188.2749362 https://ink.library.smu.edu.sg/context/sis_research/article/6476/viewcontent/OnlineMultimodalCo_indexingandRetrievalofWeaklyLabeledWebImageCollections.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Hierarchical image co-indexing multimodal search online learning clustering weakly supervised learning Databases and Information Systems Graphics and Human Computer Interfaces |
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Hierarchical image co-indexing multimodal search online learning clustering weakly supervised learning Databases and Information Systems Graphics and Human Computer Interfaces MENG, Lei TAN, Ah-hwee LEUNG, Cyril NIE, Liqiang CHUA, Tan-Seng MIAO, Chunyan Online multimodal co-indexing and retrieval of weakly labeled web image collections |
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Weak supervisory information of web images, such as captions, tags, and descriptions, make it possible to better understand images at the semantic level. In this paper, we propose a novel online multimodal co-indexing algorithm based on Adaptive Resonance Theory, named OMC-ART, for the automatic co-indexing and retrieval of images using their multimodal information. Compared with existing studies, OMC-ART has several distinct characteristics. First, OMCART is able to perform online learning of sequential data. Second, OMC-ART builds a two-layer indexing structure, in which the first layer co-indexes the images by the key visual and textual features based on the generalized distributions of clusters they belong to; while in the second layer, images are co-indexed by their own feature distributions. Third, OMC-ART enables flexible multimodal search by using either visual features, keywords, or a combination of both. Fourth, OMC-ART employs a ranking algorithm that does not need to go through the whole indexing system when only a limited number of images need to be retrieved. Experiments on two published data sets demonstrate the efficiency and effectiveness of our proposed approach. |
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MENG, Lei TAN, Ah-hwee LEUNG, Cyril NIE, Liqiang CHUA, Tan-Seng MIAO, Chunyan |
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MENG, Lei TAN, Ah-hwee LEUNG, Cyril NIE, Liqiang CHUA, Tan-Seng MIAO, Chunyan |
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MENG, Lei |
title |
Online multimodal co-indexing and retrieval of weakly labeled web image collections |
title_short |
Online multimodal co-indexing and retrieval of weakly labeled web image collections |
title_full |
Online multimodal co-indexing and retrieval of weakly labeled web image collections |
title_fullStr |
Online multimodal co-indexing and retrieval of weakly labeled web image collections |
title_full_unstemmed |
Online multimodal co-indexing and retrieval of weakly labeled web image collections |
title_sort |
online multimodal co-indexing and retrieval of weakly labeled web image collections |
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Institutional Knowledge at Singapore Management University |
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2015 |
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https://ink.library.smu.edu.sg/sis_research/5473 https://ink.library.smu.edu.sg/context/sis_research/article/6476/viewcontent/OnlineMultimodalCo_indexingandRetrievalofWeaklyLabeledWebImageCollections.pdf |
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