Remote Sensing (Jul 2022)

A Hybrid-Order Spectral-Spatial Feature Network for Hyperspectral Image Classification

  • Dongxu Liu,
  • Guangliang Han,
  • Peixun Liu,
  • Yirui Wang,
  • Hang Yang,
  • Dianbing Chen,
  • Qingqing Li,
  • Jiajia Wu

DOI
https://doi.org/10.3390/rs14153555
Journal volume & issue
Vol. 14, no. 15
p. 3555

Abstract

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Convolutional neural networks are widely applied in hyperspectral image (HSI) classification and show excellent performance. However, there are two challenges: the first is that fine features are generally lost in the process of depth transfer; the second is that most existing studies usually restore to first-order features, whereas they rarely consider second-order representations. To tackle the above two problems, this article proposes a hybrid-order spectral-spatial feature network (HS2FNet) for hyperspectral image classification. This framework consists of a precedent feature extraction module (PFEM) and a feature rethinking module (FRM). The former is constructed to capture multiscale spectral-spatial features and focus on adaptively recalibrate channel-wise and spatial-wise feature responses to achieve first-order spectral-spatial feature distillation. The latter is devised to heighten the representative ability of HSI by capturing the importance of feature cross-dimension, while learning more discriminative representations by exploiting the second-order statistics of HSI, thereby improving the classification performance. Massive experiments demonstrate that the proposed network achieves plausible results compared with the state-of-the-art classification methods.

Keywords