Heterogeneous Transfer Learning for Hyperspectral Image Classification Based on Convolutional Neural Network

被引:135
作者
He, Xin [1 ]
Chen, Yushi [1 ]
Ghamisi, Pedram [2 ]
机构
[1] Harbin Inst Technol, Sch Elect & Informat Engn, Harbin 150001, Peoples R China
[2] Helmholtz Zentrum Dresden Rossendorf, Helmholtz Inst Freiberg Resource Technol, D-09599 Freiberg, Germany
来源
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING | 2020年 / 58卷 / 05期
关键词
Feature extraction; Training; Hyperspectral imaging; Convolutional neural nets; Data models; Kernel; Classification; convolutional neural network (CNN); hyperspectral image (HSI); transfer learning; SPECTRAL-SPATIAL CLASSIFICATION; SELECTION; PROFILES; BAND;
D O I
10.1109/TGRS.2019.2951445
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Deep convolutional neural networks (CNNs) have shown their outstanding performance in the hyperspectral image (HSI) classification. The success of CNN-based HSI classification relies on the availability sufficient training samples. However, the collection of training samples is expensive and time consuming. Besides, there are many pretrained models on large-scale data sets, which extract the general and discriminative features. The proper reusage of low-level and midlevel representations will significantly improve the HSI classification accuracy. The large-scale ImageNet data set has three channels, but HSI contains hundreds of channels. Therefore, there are several difficulties to simply adapt the pretrained models for the classification of HSIs. In this article, heterogeneous transfer learning for HSI classification is proposed. First, a mapping layer is used to handle the issue of having different numbers of channels. Then, the model architectures and weights of the CNN trained on the ImageNet data sets are used to initialize the model and weights of the HSI classification network. Finally, a well-designed neural network is used to perform the HSI classification task. Furthermore, attention mechanism is used to adjust the feature maps due to the difference between the heterogeneous data sets. Moreover, controlled random sampling is used as another training sample selection method to test the effectiveness of the proposed methods. Experimental results on four popular hyperspectral data sets with two training sample selection strategies show that the transferred CNN obtains better classification accuracy than that of state-of-the-art methods. In addition, the idea of heterogeneous transfer learning may open a new window for further research.
引用
收藏
页码:3246 / 3263
页数:18
相关论文
共 65 条
  • [1] Spectral-Spatial Classification of Hyperspectral Images: Three Tricks and a New Learning Setting
    Acquarelli, Jacopo
    Marchiori, Elena
    Buydens, Lutgarde M. C.
    Thanh Tran
    van Laarhoven, Twan
    [J]. REMOTE SENSING, 2018, 10 (07):
  • [2] [Anonymous], 2013, P 25 INT C NEUR INF
  • [3] [Anonymous], 2007, Hyperspectral data exploitation: theory and applications
  • [4] [Anonymous], 2017, PROC INT C LEARN REP
  • [5] Deep Learning With Attribute Profiles for Hyperspectral Image Classification
    Aptoula, Erchan
    Ozdemir, Murat Can
    Yanikoglu, Berrin
    [J]. IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2016, 13 (12) : 1970 - 1974
  • [6] Learning from Imbalanced Data Sets with Weighted Cross-Entropy Function
    Aurelio, Yuri Sousa
    de Almeida, Gustavo Matheus
    de Castro, Cristiano Leite
    Braga, Antonio Padua
    [J]. NEURAL PROCESSING LETTERS, 2019, 50 (02) : 1937 - 1949
  • [7] Classification of Hyperspectral Images With Regularized Linear Discriminant Analysis
    Bandos, Tatyana V.
    Bruzzone, Lorenzo
    Camps-Valls, Gustavo
    [J]. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2009, 47 (03): : 862 - 873
  • [8] Classification of hyperspectral data from urban areas based on extended morphological profiles
    Benediktsson, JA
    Palmason, JA
    Sveinsson, JR
    [J]. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2005, 43 (03): : 480 - 491
  • [9] Hyperspectral Remote Sensing Data Analysis and Future Challenges
    Bioucas-Dias, Jose M.
    Plaza, Antonio
    Camps-Valls, Gustavo
    Scheunders, Paul
    Nasrabadi, Nasser M.
    Chanussot, Jocelyn
    [J]. IEEE GEOSCIENCE AND REMOTE SENSING MAGAZINE, 2013, 1 (02) : 6 - 36
  • [10] Breiman L., 2001, Mach. Learn., V45, P5