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GLocal structural feature selection with sparsity for multimedia data understanding

Published: 21 October 2013 Publication History

Abstract

The selection of discriminative features is an important and effective technique for many multimedia tasks. Using irrelevant features in classification or clustering tasks could deteriorate the performance. Thus, designing efficient feature selection algorithms to remove the irrelevant features is a possible way to improve the classification or clustering performance. With the successful usage of sparse models in image and video classification and understanding, imposing structural sparsity in \emph{feature selection} has been widely investigated during the past years. Motivated by the merit of sparse models, we propose a novel feature selection method using a sparse model in this paper. Different from the state of the art, our method is built upon $\ell _{2,p}$-norm and simultaneously considers both the global and local (GLocal) structures of data distribution. Our method is more flexible in selecting the discriminating features as it is able to control the degree of sparseness. Moreover, considering both global and local structures of data distribution makes our feature selection process more effective. An efficient algorithm is proposed to solve the $\ell_{2,p}$-norm sparsity optimization problem in this paper. Experimental results performed on real-world image and video datasets show the effectiveness of our feature selection method compared to several state-of-the-art methods.

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Cited By

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  • (2019)Supervised Mixed Norm Autoencoder for Kinship Verification in Unconstrained VideosIEEE Transactions on Image Processing10.1109/TIP.2018.284088028:3(1329-1341)Online publication date: 1-Mar-2019
  • (2018)Visual understanding by mining social mediaFrontiers of Computer Science: Selected Publications from Chinese Universities10.1007/s11704-017-6377-112:3(406-422)Online publication date: 1-Jun-2018
  • (2018)Semantic feature based multi-spectral saliency detectionMultimedia Tools and Applications10.1007/s11042-017-5152-577:3(3387-3403)Online publication date: 1-Feb-2018
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  1. GLocal structural feature selection with sparsity for multimedia data understanding

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      cover image ACM Conferences
      MM '13: Proceedings of the 21st ACM international conference on Multimedia
      October 2013
      1166 pages
      ISBN:9781450324045
      DOI:10.1145/2502081
      Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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      New York, NY, United States

      Publication History

      Published: 21 October 2013

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      Author Tags

      1. feature selection
      2. global and local
      3. image and video classification
      4. l2
      5. p-norm

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      MM '13
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      MM '13: ACM Multimedia Conference
      October 21 - 25, 2013
      Barcelona, Spain

      Acceptance Rates

      MM '13 Paper Acceptance Rate 47 of 235 submissions, 20%;
      Overall Acceptance Rate 2,145 of 8,556 submissions, 25%

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      Cited By

      View all
      • (2019)Supervised Mixed Norm Autoencoder for Kinship Verification in Unconstrained VideosIEEE Transactions on Image Processing10.1109/TIP.2018.284088028:3(1329-1341)Online publication date: 1-Mar-2019
      • (2018)Visual understanding by mining social mediaFrontiers of Computer Science: Selected Publications from Chinese Universities10.1007/s11704-017-6377-112:3(406-422)Online publication date: 1-Jun-2018
      • (2018)Semantic feature based multi-spectral saliency detectionMultimedia Tools and Applications10.1007/s11042-017-5152-577:3(3387-3403)Online publication date: 1-Feb-2018
      • (2017)Topic categorization and representation of health community generated dataMultimedia Tools and Applications10.1007/s11042-015-3094-376:8(10541-10553)Online publication date: 1-Apr-2017
      • (2016)Uncorrelated feature selection via intra-group competition and inter-group cooperation2016 12th World Congress on Intelligent Control and Automation (WCICA)10.1109/WCICA.2016.7578485(1201-1205)Online publication date: Jun-2016
      • (2016)A classification model for semantic entailment recognition with feature combinationNeurocomputing10.1016/j.neucom.2016.01.096208:C(127-135)Online publication date: 5-Oct-2016
      • (2016)Semi-supervised subspace learning with L2graphNeurocomputing10.1016/j.neucom.2015.11.112208:C(143-152)Online publication date: 5-Oct-2016
      • (2016)Unified discriminating feature analysis for visual category recognitionJournal of Visual Communication and Image Representation10.1016/j.jvcir.2016.06.02840:PB(772-778)Online publication date: 1-Oct-2016
      • (2015)Evaluation of semi-supervised learning method on action recognitionMultimedia Tools and Applications10.1007/s11042-014-1936-z74:2(523-542)Online publication date: 1-Jan-2015
      • (2014)GLocal tells you more: Coupling GLocal structural for feature selection with sparsity for image and video classificationComputer Vision and Image Understanding10.1016/j.cviu.2014.02.006124(99-109)Online publication date: Jul-2014

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