Spectral clustering for data categorization based on self-organizing maps

被引:1
|
作者
Saalbach, A [1 ]
Twellmann, T [1 ]
Nattkemper, TW [1 ]
机构
[1] Univ Bielefeld, Appl Neuroinformat Grp, D-33615 Bielefeld, Germany
来源
APPLICATIONS OF NEURAL NETWORKS AND MACHINE LEARNING IN IMAGE PROCESSING IX | 2005年 / 5673卷
关键词
spectral clustering; self-organizing maps; neural gas; hierarchical clustering; adjusted rand index;
D O I
10.1117/12.585857
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The exploration and categorization of large and unannotated image collections is a challenging task in the field of image retrieval as well as in the generation of appearance based object representations. In this context the Self-Organizing Map (SOM) has shown to be an efficient and scalable tool for the analysis of image collections based on low level features. Next to commonly employed visualization methods, clustering techniques have been recently considered for the aggregation of SOM nodes into groups in order to facilitate category specific data exploration. In this paper, spectral clustering based on graph theoretic concepts is employed for SOM based clustering and data categorization. The results are compared with those from the Neural Gas algorithm and hierarchical agglomerative clustering. Using SOMs trained on an eigenspace representation of the Columbia Object Image Library 20 (COIL20), the correspondence of the results to a semantic reference grouping is calculated. Based on the Adjusted Rand Index it is shown that independent from the number of selected clusters, spectral clustering achieves a significantly higher correspondence to the reference grouping than any of the other methods.
引用
收藏
页码:12 / 18
页数:7
相关论文
共 50 条
  • [1] Hierarchical self-organizing maps for clustering spatiotemporal data
    Hagenauer, Julian
    Helbich, Marco
    INTERNATIONAL JOURNAL OF GEOGRAPHICAL INFORMATION SCIENCE, 2013, 27 (10) : 2026 - 2042
  • [2] Self-organizing maps and clustering methods for matrix data
    Seo, S
    Obermayer, K
    NEURAL NETWORKS, 2004, 17 (8-9) : 1211 - 1229
  • [3] Topology-Based Hierarchical Clustering of Self-Organizing Maps
    Tasdemir, Kadim
    Milenov, Pavel
    Tapsall, Brooke
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2011, 22 (03): : 474 - 485
  • [4] Writer Recognition by Means of Stroke Categorization based on Self-Organizing Maps
    Sesa-Nogueras, Enric
    Faundez-Zanuy, Marcos
    NEURAL NETS WIRN11, 2011, 234 : 247 - 254
  • [5] Gird pattern recognition based on clustering of self-organizing maps
    Tian, Jing
    Zhang, Boyu
    Yang, Wenyu
    Tian, J. (yutaka-2010@163.com), 1600, Editorial Board of Medical Journal of Wuhan University (38): : 1330 - 1334
  • [6] Interval data clustering using self-organizing maps based on adaptive Mahalanobis distances
    Hajjar, Chantal
    Hamdan, Hani
    NEURAL NETWORKS, 2013, 46 : 124 - 132
  • [7] Incremental Self-Organizing Maps for Collaborative Clustering
    Maurel, Denis
    Sublime, Jeremie
    Lefebvre, Sylvain
    NEURAL INFORMATION PROCESSING, ICONIP 2017, PT I, 2017, 10634 : 497 - 504
  • [8] Microarray Data Clustering and Visualization Tool Using Self-Organizing Maps
    Marasigan, Zach Andrei
    Dionisio, Abigaile
    Solano, Geoffrey
    2015 6TH INTERNATIONAL CONFERENCE ON INFORMATION, INTELLIGENCE, SYSTEMS AND APPLICATIONS (IISA), 2015,
  • [9] Gene clustering by using query-based self-organizing maps
    Chang, Ray-I
    Chu, Chih-Chun
    Wu, Yu-Ying
    Chen, Yen-Liang
    EXPERT SYSTEMS WITH APPLICATIONS, 2010, 37 (09) : 6689 - 6694
  • [10] Application of self-organizing maps to coal elemental data
    Xu, Na
    Zhu, Wei
    Wang, Ru
    Li, Qiang
    Wang, Zhiwei
    Finkelman, Robert B.
    INTERNATIONAL JOURNAL OF COAL GEOLOGY, 2023, 277