Multiple one-dimensional embedding clustering scheme for hyperspectral image classification

被引:9
作者
Song, Yalong [1 ]
Li, Hong [1 ]
Wang, Jianzhong [2 ]
Kou, Kit Ian [3 ]
机构
[1] Huazhong Univ Sci & Technol, Sch Math & Stat, Wuhan 430074, Peoples R China
[2] Sam Houston State Univ, Dept Math & Stat, Huntsville, TX 77341 USA
[3] FST Univ Macau, Dept Math, Taipa, Macao, Peoples R China
基金
中国国家自然科学基金;
关键词
Sorting; 1D multi embedding; hyperspectral image classification; regularization; SPARSE;
D O I
10.1142/S021969131640004X
中图分类号
TP31 [计算机软件];
学科分类号
081202 ; 0835 ;
摘要
In this paper, we present a novel multiple 1D-embedding based clustering (M1DEBC) scheme for hyperspectral image (HSI) classification. This novel clustering scheme is an iteration algorithm of 1D-embedding based regularization, which is first proposed by J. Wang [Semi-supervised learning using ensembles of multiple 1D-embedding-based label boosting, Int. J. Wavelets, Multiresolut. Inf. Process. 14(2) (2016) 33 pp.; Semi- supervised learning using multiple one-dimensional embedding-based adaptive interpolation, Int. J. Wavelets, Multiresolut. Inf. Process. 14(2) (2016) 11 pp.]. In the algorithm, at each iteration, we do the following three steps. First, we construct a 1D multi-embedding, which contains k different versions of 1D embedding. Each of them is realized by an isometric mapping that maps all the pixels in a HSI into a line such that the sum of the distances of adjacent pixels in the original space is minimized. Second, for each 1D embedding, we use the regularization method to find a pre-classifier to give each unlabeled sample a preliminary label. If all of the k different versions of regularization vote the same preliminary label, then we call it a feasible confident sample. All the feasible confident samples and their corresponding labels constitute the auxiliary set. We randomly select a part of the elements from the auxiliary set to construct the newborn labeled set. Finally, we add the newborn labeled set into the labeled sample set. Thus, the labeled sample set is gradually enlarged in the process of the iteration. The iteration terminates until the updated labeled set reaches a certain size. Our experimental results on real hyperspectral datasets confirm the effectiveness of the proposed scheme.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Hyperspectral image classification using three-dimensional geometric moments
    Kumar, Brajesh
    IET IMAGE PROCESSING, 2020, 14 (10) : 2175 - 2186
  • [22] A Discontinuity Preserving Relaxation Scheme for Spectral-Spatial Hyperspectral Image Classification
    Li, Jun
    Khodadadzadeh, Mahdi
    Plaza, Antonio
    Jia, Xiuping
    Bioucas-Dias, Jose M.
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2016, 9 (02) : 625 - 639
  • [23] A New Framework for Hyperspectral Image Classification Using Multiple Semisupervised Collaborative Classification Algortithm
    Cui, Ying
    Ji, Xiaowei
    Wang, Heng
    Xu, Kai
    Wu, Shaoqiao
    Wang, Liguo
    IEEE ACCESS, 2019, 7 : 125155 - 125175
  • [24] SUBSPACE SELECTION BASED MULTIPLE CLASSIFIER SYSTEMS FOR HYPERSPECTRAL IMAGE CLASSIFICATION
    Kuo, Bor-Chen
    Chuang, Chun-Hsiang
    Li, Cheng-Hsuan
    Lin, Chin-Teng
    2009 FIRST WORKSHOP ON HYPERSPECTRAL IMAGE AND SIGNAL PROCESSING: EVOLUTION IN REMOTE SENSING, 2009, : 211 - +
  • [25] HYPERSPECTRAL IMAGE CLASSIFICATION USING MULTIPLE FEATURES AND NEAREST REGULARIZED SUBSPACE
    Peng, Bing
    Xie, Xiaoming
    Li, Wei
    Due, Qian
    2015 7TH WORKSHOP ON HYPERSPECTRAL IMAGE AND SIGNAL PROCESSING: EVOLUTION IN REMOTE SENSING (WHISPERS), 2015,
  • [26] A manifold framework of multiple-kernel learning for hyperspectral image classification
    Xie, Xiaodan
    Li, Bohu
    Chai, Xudong
    NEURAL COMPUTING & APPLICATIONS, 2017, 28 (11) : 3429 - 3439
  • [27] A manifold framework of multiple-kernel learning for hyperspectral image classification
    Xiaodan Xie
    Bohu Li
    Xudong Chai
    Neural Computing and Applications, 2017, 28 : 3429 - 3439
  • [28] Global-local manifold embedding broad graph convolutional network for hyperspectral image classification
    Cao, Heling
    Cao, Jun
    Chu, Yonghe
    Wang, Yun
    Liu, Guangen
    Li, Peng
    NEUROCOMPUTING, 2024, 602
  • [29] One-Shot Dense Network with Polarized Attention for Hyperspectral Image Classification
    Pan, Haizhu
    Liu, Moqi
    Ge, Haimiao
    Wang, Liguo
    REMOTE SENSING, 2022, 14 (09)
  • [30] Multiple vision architectures-based hybrid network for hyperspectral image classification
    Zhao, Feng
    Zhang, Junjie
    Meng, Zhe
    Liu, Hanqiang
    Chang, Zhenhui
    Fan, Jiulun
    EXPERT SYSTEMS WITH APPLICATIONS, 2023, 234