Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
article

Hypergraph with sampling for image retrieval

Published: 01 October 2011 Publication History

Abstract

In this paper, we propose a new transductive learning framework for image retrieval, in which images are taken as vertices in a weighted hypergraph and the task of image search is formulated as the problem of hypergraph ranking. Based on the similarity matrix computed from various feature descriptors, we take each image as a 'centroid' vertex and form a hyperedge by a centroid and its k-nearest neighbors. To further exploit the correlation information among images, we propose a soft hypergraph, which assigns each vertex v"i to a hyperedge e"j in a soft way. In the incidence structure of a soft hypergraph, we describe both the higher order grouping information and the affinity relationship between vertices within each hyperedge. After feedback images are provided, our retrieval system ranks image labels by a transductive inference approach, which tends to assign the same label to vertices that share many incidental hyperedges, with the constraints that predicted labels of feedback images should be similar to their initial labels. We further reduce the computation cost with the sampling strategy. We compare the proposed method to several other methods and its effectiveness is demonstrated by extensive experiments on Corel5K, the Scene dataset and Caltech 101.

References

[1]
S. Agarwal, K. Branson, S. Belongie, Higher order learning with graphs, in: ICML '06, 2006.
[2]
S. Agarwal, J. Lim, L. Zelnik Manor, P. Perona, D. Kriegman, S. Belongie, Beyond pairwise clustering, in: CVPR'05, 2005.
[3]
Alpert, C.J. and Kahng, A.B., Recent directions in netlist partitioning: a survey. Integration: The VLSI Journal. v19. 1-81.
[4]
Bolla, M., Spectra, Euclidean representations and clustering of hypergraphs. In: Discrete Mathematics,
[5]
A. Bosch, A. Zisserman, X. Munoz, Representing shape with a spatial pyramid kernel, in: CIVR '07, 2007.
[6]
D. Cai, X. He, J. Han, Active subspace learning, in: ICCV'09, 2009.
[7]
D. Cai, X. He, J. Han, Semi-supervised discriminant analysis, in: ICCV'07, 2007.
[8]
CHEN, S., Interval-valued fuzzy hypergraph and fuzzy partition. IEEE Transactions on Systems, Man and Cybernetics-Part B. v27 i4. 725-733.
[9]
Cox, I.J., Miller, M.L., Minka, T.P., Papathomas, T.V. and Yianilos, P.N., The Bayesian image retrieval system, PicHunter: theory, implementation and psychophysical experiments. IEEE Transactions on Image Processing. v9. 20-37.
[10]
N. Dalal, B. Triggs, Histograms of oriented gradients for human detection, in: CVPR'05, 2005.
[11]
Datta, R., Joshi, D., Li, J. and Wang, J.Z., Image retrieval: ideas, influences, and trends of the new age. ACM Computing Surveys. v40 i2. 1-60.
[12]
P. Duygulu, K. Barnard, N. de Freitas, P. Duygulu, K. Barnard, D. Forsyth, Object recognition as machine translation: learning a lexicon for a fixed image vocabulary in: ECCV'02, 2002.
[13]
He, J., Li, M., Zhang, H., Tong, H. and Zhang, C., Generalized manifold-ranking-based image retrieval. IEEE Transactions on Image Processing. v15 i10. 3170-3177.
[14]
J. He, M. Li, H.-J. Zhang, H. Tong, C. Zhang, Manifold-ranking based image retrieval, in: ACM MULTIMEDIA '04, 2004.
[15]
X. He, W.-Y. Ma, O. King, M. Li, H. Zhang, Learning and inferring a semantic space from user's relevance feedback for image retrieval, in: ACM MULTIMEDIA '02, 2002.
[16]
S.C.H. Hoi, M.R. Lyu, A semi-supervised active learning framework for image retrieval, in: CVPR'05, 2005.
[17]
Y. Huang, Q. Liu, D. Metaxas, Video object segmentation by hypergraph cut, CVPR'09, 2009.
[18]
KamHo, T., The random subspace method for constructing decision forests. IEEE Transactions on Pattern Analysis and Machine Intelligence. v20 i8. 832-844.
[19]
S. Lazebnik, C. Schmid, J. Ponce, Beyond bags of features: spatial pyramid matching for recognizing natural scene categories, in: CVPR'06, 2006.
[20]
Li, F., Fergus, R. and Perona, P., Learning generative visual models from few training examples: an incremental Bayesian approach tested on 101 object categories. Computer Vision and Image Understanding. v106 i1. 59-70.
[21]
F.-F. Li, P. Perona, A Bayesian hierarchical model for learning natural scene categories, in: CVPR'05, 2005.
[22]
D. Lowe, Object recognition from local scale-invariant features, in: ICCV'09, 2009.
[23]
MacArthur, S., Brodley, C. and Shyu, C., Relevance feedback decision trees in content-based image retrieval. In: CBAIVL '00: Proceedings of the IEEE Workshop on Content-based Access of Image and Video Libraries, pp. 68
[24]
Rodréquez, J., On the Laplacian spectrum and walk-regular hypergraphs. In: Linear and Multilinear Algebra,
[25]
Rui, Y., Huang, T.S. and Chang, S.-F., Image retrieval: current techniques, promising directions, and open issues. Journal of Visual Communication and Image Representation. v10 i1. 39-62.
[26]
H. Sahbi, J. Audibert, R. Keriven, Graph-cut transducers for relevance feedback in content based image retrieval, in: ICCV'07, 2007.
[27]
L. Sun, S. Ji, J. Ye, Hypergraph spectral learning for multi-label classification, in: SIG KDD '08, 2008.
[28]
Z. Tian, T. Hwang, R. Kuang, A hypergraph-based learning algorithm for classifying gene expression and array cgh data with prior knowledge, Bioinformatics July (2009).
[29]
Tieu, K. and Viola, P., Boosting image retrieval. International Journal of Computer Vision. 228-235.
[30]
S. Tong, E. Chang, Support vector machine active learning for image retrieval, in: ACM MULTIMEDIA'01, 2001.
[31]
van de Sande, K.E.A., Gevers, T. and Snoek, C.G.M., Evaluating color descriptors for object and scene recognition. IEEE Transactions on Pattern Analysis and Machine Intelligence. v32 i9. 1582-1596.
[32]
J. van Gemert, J. Geusebroek, C. Veenman, A. Smeulders, Kernel codebooks for scene categorization, in: ECCV'08, 2008.
[33]
Wang, X. and Tang, X., Random sampling for subspace face recognition. International Journal of Computer Vision. v70 i1. 91-104.
[34]
R. Zass, A. Shashua, Probabilistic graph and hypergraph matching, in: CVPR'08, 2008.
[35]
D. Zhou, O. Bousquet, T.N. Lal, J. Weston, B. Schökopf, Learning with local and global consistency, in: NIPS'03, 2003.
[36]
D. Zhou, J. Huang, B. Schökopf, Learning with hypergraphs: clustering, classification, and embedding, in: NIPS'06, 2006.
[37]
D. Zhou, J. Huang, B. Schölkopf, Learning from labeled and unlabeled data on a directed graph, in: ICML'05, 2005.
[38]
X. Zhu, Z. Ghahramani, J. Lafferty, Semi-supervised learning using Gaussian fields and harmonic functions, in: ICML'03, 2003.
[39]
Zien, J.Y., Schlag, M.D.F. and Chan, P.K., Multi-level spectral hypergraph partitioning with arbitrary vertex sizes. In: Proceedings of the ICCAD, IEEE Press. pp. 201-204.

Cited By

View all
  1. Hypergraph with sampling for image retrieval

    Recommendations

    Comments

    Information & Contributors

    Information

    Published In

    cover image Pattern Recognition
    Pattern Recognition  Volume 44, Issue 10-11
    October, 2011
    571 pages

    Publisher

    Elsevier Science Inc.

    United States

    Publication History

    Published: 01 October 2011

    Author Tags

    1. Hypergraph
    2. Image retrieval

    Qualifiers

    • Article

    Contributors

    Other Metrics

    Bibliometrics & Citations

    Bibliometrics

    Article Metrics

    • Downloads (Last 12 months)0
    • Downloads (Last 6 weeks)0
    Reflects downloads up to 10 Nov 2024

    Other Metrics

    Citations

    Cited By

    View all
    • (2024)Higher-Order Networks Representation and Learning: A SurveyACM SIGKDD Explorations Newsletter10.1145/3682112.368211426:1(1-18)Online publication date: 25-Jul-2024
    • (2024)Unsupervised Alignment of Hypergraphs with Different ScalesProceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining10.1145/3637528.3671955(609-620)Online publication date: 25-Aug-2024
    • (2024)Sampling hypergraphs via joint unbiased random walkWorld Wide Web10.1007/s11280-024-01253-827:2Online publication date: 19-Feb-2024
    • (2024)Hyper-distance oracles in hypergraphsThe VLDB Journal — The International Journal on Very Large Data Bases10.1007/s00778-024-00851-233:5(1333-1356)Online publication date: 1-Sep-2024
    • (2023)Improving the core resilience of real-world hypergraphsData Mining and Knowledge Discovery10.1007/s10618-023-00958-037:6(2438-2493)Online publication date: 9-Aug-2023
    • (2022)Toward maintenance of hypercores in large-scale dynamic hypergraphsThe VLDB Journal — The International Journal on Very Large Data Bases10.1007/s00778-022-00763-z32:3(647-664)Online publication date: 20-Sep-2022
    • (2021)A Hypergraph-based Method for Pharmaceutical Data Similarity RetrievalProceedings of the 4th International Conference on Big Data Technologies10.1145/3490322.3490344(134-140)Online publication date: 24-Sep-2021
    • (2020)Robust Sparse Low-rank Hypergraph Learning under Complex Noise2020 IEEE International Conference on Systems, Man, and Cybernetics (SMC)10.1109/SMC42975.2020.9283388(4088-4094)Online publication date: 11-Oct-2020
    • (2018)Visual Analytics of Heterogeneous Data Using Hypergraph LearningACM Transactions on Intelligent Systems and Technology10.1145/320076510:1(1-26)Online publication date: 20-Dec-2018
    • (2018)Joint Hypergraph Learning for Tag-Based Image RetrievalIEEE Transactions on Image Processing10.1109/TIP.2018.283721927:9(4437-4451)Online publication date: 1-Sep-2018
    • Show More Cited By

    View Options

    View options

    Get Access

    Login options

    Media

    Figures

    Other

    Tables

    Share

    Share

    Share this Publication link

    Share on social media