Depth-Wise Separable Convolution Neural Network with Residual Connection for Hyperspectral Image Classification

被引:31
作者
Dang, Lanxue [1 ,2 ,3 ]
Pang, Peidong [1 ,2 ]
Lee, Jay [4 ,5 ]
机构
[1] Henan Univ, Sch Comp & Informat Engn, Kaifeng 475004, Peoples R China
[2] Henan Univ, Henan Key Lab Big Data Anal & Proc, Kaifeng 475004, Peoples R China
[3] Henan Univ, Henan Engn Lab Spatial Informat Proc, Kaifeng 475004, Peoples R China
[4] Henan Univ, Coll Environm & Planning, Kaifeng 475004, Peoples R China
[5] Kent State Univ, Dept Geog, Kent, OH 44240 USA
基金
中国国家自然科学基金;
关键词
convolution neural network; depth-wise separable convolution; residual unit; hyperspectral image classification; spatial-spectral features; SPECTRAL-SPATIAL CLASSIFICATION; FEATURE-SELECTION;
D O I
10.3390/rs12203408
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The neural network-based hyperspectral images (HSI) classification model has a deep structure, which leads to the increase of training parameters, long training time, and excessive computational cost. The deepened network models are likely to cause the problem of gradient disappearance, which limits further improvement for its classification accuracy. To this end, a residual unit with fewer training parameters were constructed by combining the residual connection with the depth-wise separable convolution. With the increased depth of the network, the number of output channels of each residual unit increases linearly with a small amplitude. The deepened network can continuously extract the spectral and spatial features while building a cone network structure by stacking the residual units. At the end of executing the model, a 1 x 1 convolution layer combined with a global average pooling layer can be used to replace the traditional fully connected layer to complete the classification with reduced parameters needed in the network. Experiments were conducted on three benchmark HSI datasets: Indian Pines, Pavia University, and Kennedy Space Center. The overall classification accuracy was 98.85%, 99.58%, and 99.96% respectively. Compared with other classification methods, the proposed network model guarantees a higher classification accuracy while spending less time on training and testing sample sites.
引用
收藏
页码:1 / 20
页数:20
相关论文
共 31 条
  • [11] Howard A. G., 2017, ABS170404861 CORR, DOI DOI 10.48550/ARXIV.1704.04861
  • [12] Deep Convolutional Neural Networks for Hyperspectral Image Classification
    Hu, Wei
    Huang, Yangyu
    Wei, Li
    Zhang, Fan
    Li, Hengchao
    [J]. JOURNAL OF SENSORS, 2015, 2015
  • [13] Ioffe S., 2015, P 32 INT C MACH LEAR, P448, DOI DOI 10.48550/ARXIV.1502.03167
  • [14] A Kernel-Based Feature Selection Method for SVM With RBF Kernel for Hyperspectral Image Classification
    Kuo, Bor-Chen
    Ho, Hsin-Hua
    Li, Cheng-Hsuan
    Hung, Chih-Cheng
    Taur, Jin-Shiuh
    [J]. IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2014, 7 (01) : 317 - 326
  • [15] Gradient-based learning applied to document recognition
    Lecun, Y
    Bottou, L
    Bengio, Y
    Haffner, P
    [J]. PROCEEDINGS OF THE IEEE, 1998, 86 (11) : 2278 - 2324
  • [16] CONTEXTUAL DEEP CNN BASED HYPERSPECTRAL CLASSIFICATION
    Lee, Hyungtae
    Kwon, Heesung
    [J]. 2016 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS), 2016, : 3322 - 3325
  • [17] An effective feature selection method for hyperspectral image classification based on genetic algorithm and support vector machine
    Li, Shijin
    Wu, Hao
    Wan, Dingsheng
    Zhu, Jiali
    [J]. KNOWLEDGE-BASED SYSTEMS, 2011, 24 (01) : 40 - 48
  • [18] An Approach to Improve the Positioning Performance of GPS/INS/UWB Integrated System with Two-Step Filter
    Li, Zengke
    Wang, Ren
    Gao, Jingxiang
    Wang, Jian
    [J]. REMOTE SENSING, 2018, 10 (01)
  • [19] Lin M, 2014, PUBLIC HEALTH NUTR, V17, P2029, DOI [10.1017/S1368980013002176, 10.1109/PLASMA.2013.6634954]
  • [20] Long J, 2015, PROC CVPR IEEE, P3431, DOI 10.1109/CVPR.2015.7298965