Scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection
Near-duplicate (ND) detection appears as a timely issue recently, being regarded as a powerful tool for various emerging applications. In the Web 2.0 environment particularly, the identification of near-duplicates enables the tasks such as copyright enforcement, news topic tracking, image and video...
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sg-smu-ink.sis_research-73442021-11-23T04:07:11Z Scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection ZHAO, Wan-Lei NGO, Chong-wah Near-duplicate (ND) detection appears as a timely issue recently, being regarded as a powerful tool for various emerging applications. In the Web 2.0 environment particularly, the identification of near-duplicates enables the tasks such as copyright enforcement, news topic tracking, image and video search. In this paper, we describe an algorithm, namely Scale-Rotation invariant Pattern Entropy (SR-PE), for the detection of near-duplicates in large-scale video corpus. SR-PE is a novel pattern evaluation technique capable of measuring the spatial regularity of matching patterns formed by local keypoints. More importantly, the coherency of patterns and the perception of visual similarity, under the scenario that there could be multiple ND regions undergone arbitrary transformations, respectively, are carefully addressed through entropy measure. To demonstrate our work in large-scale dataset, a practical framework composed of three components: bag-of-words representation, local keypoint matching and SR-PE evaluation, is also proposed for the rapid detection of near-duplicates. 2009-02-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/6341 info:doi/10.1109/TIP.2008.2008900 https://ink.library.smu.edu.sg/context/sis_research/article/7344/viewcontent/tip09_zhao__1_.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 Keypoints near-duplicate detection pattern entropy (PE) visual vocabulary Computer Sciences Graphics and Human Computer Interfaces |
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Keypoints near-duplicate detection pattern entropy (PE) visual vocabulary Computer Sciences Graphics and Human Computer Interfaces ZHAO, Wan-Lei NGO, Chong-wah Scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection |
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Near-duplicate (ND) detection appears as a timely issue recently, being regarded as a powerful tool for various emerging applications. In the Web 2.0 environment particularly, the identification of near-duplicates enables the tasks such as copyright enforcement, news topic tracking, image and video search. In this paper, we describe an algorithm, namely Scale-Rotation invariant Pattern Entropy (SR-PE), for the detection of near-duplicates in large-scale video corpus. SR-PE is a novel pattern evaluation technique capable of measuring the spatial regularity of matching patterns formed by local keypoints. More importantly, the coherency of patterns and the perception of visual similarity, under the scenario that there could be multiple ND regions undergone arbitrary transformations, respectively, are carefully addressed through entropy measure. To demonstrate our work in large-scale dataset, a practical framework composed of three components: bag-of-words representation, local keypoint matching and SR-PE evaluation, is also proposed for the rapid detection of near-duplicates. |
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ZHAO, Wan-Lei NGO, Chong-wah |
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ZHAO, Wan-Lei NGO, Chong-wah |
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ZHAO, Wan-Lei |
title |
Scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection |
title_short |
Scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection |
title_full |
Scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection |
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Scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection |
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Scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection |
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scale-rotation invariant pattern entropy for keypoint-based near-duplicate detection |
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Institutional Knowledge at Singapore Management University |
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2009 |
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https://ink.library.smu.edu.sg/sis_research/6341 https://ink.library.smu.edu.sg/context/sis_research/article/7344/viewcontent/tip09_zhao__1_.pdf |
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