Homotopy-based semi-supervised hidden Markov tree for texture analysis

被引:0
|
作者
Dasgupta, Nilanjan [1 ]
Ji, Shihao [1 ]
Carin, Lawrence [1 ]
机构
[1] Duke Univ, Dept Elect & Comp Engn, Durham, NC 27708 USA
关键词
D O I
暂无
中图分类号
O42 [声学];
学科分类号
070206 ; 082403 ;
摘要
A semi-supervised hidden Markov tree (HMT) model is developed for texture analysis, incorporating both labeled and unlabeled data for training; the optimal balance between labeled and unlabeled data is estimated via the homotopy method. In traditional EM-based semi-supervised modeling, this balance is dictated by the relative size of labeled and unlabeled data, often leading to poor performance. Semi-supervised modeling may be viewed as a source allocation problem between labeled and unlabeled data, controlled by a parameter lambda is an element of [0, 1], where lambda = 0 and 1 correspond to the purely supervised HMT model and purely unsupervised HMT based clustering, respectively. We consider the homotopy method to track a path of fixed points starting from lambda = 0, with the optimal source allocation identified as a critical transition point where the solution is unsupported by the initial labeled data. Experimental results on real textures demonstrate the superiority of this method compared to the EM-based semi-supervised HMT training.
引用
收藏
页码:1345 / 1348
页数:4
相关论文
共 50 条
  • [31] Markov random field based fusion for supervised and semi-supervised multi-modal image classification
    Liang Xie
    Peng Pan
    Yansheng Lu
    Multimedia Tools and Applications, 2015, 74 : 613 - 634
  • [32] Tree decomposition for large scale semi-supervised classification
    Zhou, Rong
    Wu, Guangchao
    Yang, Xiaowei
    Lv, Haoran
    Journal of Computational Information Systems, 2013, 9 (06): : 2451 - 2460
  • [33] A new homotopy-based approach for structural stochastic analysis
    Zhang, Heng
    Huang, Bin
    PROBABILISTIC ENGINEERING MECHANICS, 2019, 55 : 42 - 53
  • [34] On achieving semi-supervised pattern recognition by utilizing tree-based SOMs
    Astudillo, Cesar A.
    Oommen, B. John
    PATTERN RECOGNITION, 2013, 46 (01) : 293 - 304
  • [35] Semi-supervised PolSAR Image classification based on the neighborhood minimum spanning tree
    Hua W.
    Wang S.
    Guo Y.
    Xie W.
    Journal of Radars, 2019, 8 (04): : 458 - 470
  • [36] Three-Way and Semi-supervised Decision Tree Learning Based on Orthopartitions
    Campagner, Andrea
    Ciucci, Davide
    INFORMATION PROCESSING AND MANAGEMENT OF UNCERTAINTY IN KNOWLEDGE-BASED SYSTEMS: THEORY AND FOUNDATIONS, PT II, 2018, 854 : 748 - 759
  • [37] Texture segmentation using semi-supervised support vector machine
    Sanei, S
    KNOWLEDGE-BASED INTELLIGENT INFORMATION AND ENGINEERING SYSTEMS, PT 1, PROCEEDINGS, 2003, 2773 : 1357 - 1363
  • [38] A Theoretical Analysis of Semi-supervised Learning
    Fujii, Takashi
    Ito, Hidetaka
    Miyoshi, Seiji
    NEURAL INFORMATION PROCESSING, ICONIP 2016, PT II, 2016, 9948 : 28 - 36
  • [39] Human action recognition using Markov random walk based semi-supervised learning
    Yuan, Hejin
    Wang, Cuiru
    Jisuanji Fuzhu Sheji Yu Tuxingxue Xuebao/Journal of Computer-Aided Design and Computer Graphics, 2011, 23 (10): : 1749 - 1757
  • [40] Semi-supervised Marginal Fisher Analysis
    Wang, Shu
    2014 TENTH INTERNATIONAL CONFERENCE ON INTELLIGENT INFORMATION HIDING AND MULTIMEDIA SIGNAL PROCESSING (IIH-MSP 2014), 2014, : 341 - 344