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Journal of Applied Remote Sensing • new

Dimensionality-varied deep convolutional neural network for spectral–spatial classification of hyperspectral data
Author(s): Haicheng Qu; Xuejian Liang; Shichao Liang; Wanjun Liu
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Paper Abstract

Many methods of hyperspectral image classification have been proposed recently, and the convolutional neural network (CNN) achieves outstanding performance. However, spectral–spatial classification of CNN requires an excessively large model, tremendous computations, and complex network, and CNN is generally unable to use the noisy bands caused by water-vapor absorption. A dimensionality-varied CNN (DV-CNN) is proposed to address these issues. There are four stages in DV-CNN and the dimensionalities of spectral–spatial feature maps vary with the stages. DV-CNN can reduce the computation and simplify the structure of the network. All feature maps are processed by more kernels in higher stages to extract more precise features. DV-CNN also improves the classification accuracy and enhances the robustness to water-vapor absorption bands. The experiments are performed on data sets of Indian Pines and Pavia University scene. The classification performance of DV-CNN is compared with state-of-the-art methods, which contain the variations of CNN, traditional, and other deep learning methods. The experiment of performance analysis about DV-CNN itself is also carried out. The experimental results demonstrate that DV-CNN outperforms state-of-the-art methods for spectral–spatial classification and it is also robust to water-vapor absorption bands. Moreover, reasonable parameters selection is effective to improve classification accuracy.

Paper Details

Date Published: 5 January 2018
PDF: 22 pages
J. Appl. Rem. Sens. 12(1) 016007 doi: 10.1117/1.JRS.12.016007
Published in: Journal of Applied Remote Sensing Volume 12, Issue 1
Show Author Affiliations
Haicheng Qu, Liaoning Technical University, College of Software, Huludao (China)
Xuejian Liang, Liaoning Technical Univ. (China)
Shichao Liang, Liaoning Technical Univ. (China)
Wanjun Liu, Liaoning Technical Univ. (China)

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