4.7 Article

Multiscale spectral-spatial feature learning for hyperspectral image classification

Journal

DISPLAYS
Volume 74, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.displa.2022.102278

Keywords

Hyperspectral image; Spectral -spatial classification; Multiscale features; Convolutional neural network; Recurrent neural network

Funding

  1. Shanghai Education Development Foundation
  2. Shanghai Municipal Education Commission [18CG38]
  3. National Natural Science Foundation of China [61702094]
  4. Sailing Project of Science and Technology Commission of Shanghai Municipal [17YF1427400]

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This paper presents a multiscale spectral-spatial feature learning network (MulNet) for hyperspectral image (HSI) classification. By integrating a 3D Residual Network (3DResNet), a Feature Fusion Module (FFM), and a Recurrent Neural Network (RNN), the network effectively handles the spectral heterogeneity of HSIs and improves classification accuracy. Experimental results on real-world datasets demonstrate the efficacy and efficiency of the proposed network.
Hyperspectral image (HSI) classification is a prevalent topic in the remote sensing image processing community. Recently, deep learning has been successfully applied to this area. However, there is still room for improvement. Since HSIs provide rich spectral information while being prone to spectral heterogeneity that damages the classification accuracy, we propose a multiscale spectral-spatial feature learning network (MulNet), which aptly handles the information given by HSIs. Our model is a hybrid model combined with a 3-Dimensional Residual Network (3DResNet), a Feature Fusion Module (FFM), and a Recurrent Neural Network (RNN). 3DResNet encodes the original HSIs and learns local spectral-spatial features at multiple scales, which are upsampled by different ratios and aggregated by FFM. Afterward, the fused features are fed sequentially to the RNN, which exploits HSI's relations and broad contexts to produce discriminative features for better classification. Experiments on five real-world datasets using random and disjointed samples demonstrate the efficacy and efficiency of the proposed networks. It outperforms several classic and newly published spectral-spatial classifiers for HSIs.

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